29 research outputs found

    Pedestrian Detection and Tracking in Urban Context Using a Mono-camera

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    Jalakäijate tuvastus ja jälgimine on üks tähtsamaid aspekte edasijõudnud sõitja abisüsteemides. Need süsteemid aitavad vältida ohtlikke olukordi, juhendades sõitjaid ja hoiatades ettetulevate riskide eest. Jalakäijate tuvastuse ja jälgimise põhiideed on tuvastada jalakäijad siis, kui nad on turvalises tsoonis ja ennustada nende asukohta ja suunda. Selle lõputöö eesmärk on uurida võimalikke meetodeid ja arendada nende põhjal hea algoritm jalakäijate tuvastuseks ja jälgimiseks.Selles lõputöös arendatud lahendus keskendub jalakäija täpsele tuvastamisele ja jälgimisele. Süsteemi täpsuse hindamiseks on saadud tulemusi võrreldud olemasolevate lahendustega.Pedestrian detection and tracking are one of the important aspects in Advanced Driver Assistance Systems. These systems help to avoid dangerous situations, by guiding drivers and warning them about the upcoming risks. The main ideas of pedestrian detection and tracking are to detect pedestrians, while they are in the secure zone, and predict their position and direction.The goal of this thesis is to examine possible methods and based on these, to develop a good pedestrian detection and tracking algorithm. The solution developed in this thesis, focuses on accurately detecting and tracking a pedestrian. In order to estimate the accuracy of the system, obtained results will be compared to the existing solutions

    Gabor-enhanced histogram of oriented gradients for human presence detection applied in aerial monitoring

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    In UAV-based human detection, the extraction and selection of the feature vector are one of the critical tasks to ensure the optimal performance of the detection system. Although UAV cameras capture high-resolution images, human figures' relative size renders persons at very low resolution and contrast. Feature descriptors that can adequately discriminate between local symmetrical patterns in a low-contrast image may improve a human figures' detection in vegetative environments. Such a descriptor is proposed and presented in this paper. Initially, the acquired images are fed to a digital processor in a ground station where the human detection algorithm is performed. Part of the human detection algorithm is the GeHOG feature extraction, where a bank of Gabor filters is used to generate textured images from the original. The local energy for each cell of the Gabor images is calculated to identify the dominant orientations. The bins of conventional HOG are enhanced based on the dominant orientation index and the accumulated local energy in Gabor images. To measure the performance of the proposed features, Gabor-enhanced HOG (GeHOG) and other two recent improvements to HOG, Histogram of Edge Oriented Gradients (HEOG) and Improved HOG (ImHOG), are used for human detection on INRIA dataset and a custom dataset of farmers working in fields captured via unmanned aerial vehicle. The proposed feature descriptor significantly improved human detection and performed better than recent improvements in conventional HOG. Using GeHOG improved the precision of human detection to 98.23% in the INRIA dataset. The proposed feature can significantly improve human detection applied in surveillance systems, especially in vegetative environments

    Improved depth recovery in consumer depth cameras via disparity space fusion within cross-spectral stereo.

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    We address the issue of improving depth coverage in consumer depth cameras based on the combined use of cross-spectral stereo and near infra-red structured light sensing. Specifically we show that fusion of disparity over these modalities, within the disparity space image, prior to disparity optimization facilitates the recovery of scene depth information in regions where structured light sensing fails. We show that this joint approach, leveraging disparity information from both structured light and cross-spectral sensing, facilitates the joint recovery of global scene depth comprising both texture-less object depth, where conventional stereo otherwise fails, and highly reflective object depth, where structured light (and similar) active sensing commonly fails. The proposed solution is illustrated using dense gradient feature matching and shown to outperform prior approaches that use late-stage fused cross-spectral stereo depth as a facet of improved sensing for consumer depth cameras

    Video Registration for Multimodal Surveillance Systems

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    RÉSUMÉ Au cours de la dernière décennie, la conception et le déploiement de systèmes de surveillance par caméras thermiques et visibles pour l'analyse des activités humaines a retenu l'attention de la communauté de la vision par ordinateur. Les applications de l'imagerie thermique-visible pour l'analyse des activités humaines couvrent différents domaines, notamment la médecine, la sécurité à bord d'un véhicule et la sécurité des personnes. La motivation derrière un tel système est l'amélioration de la qualité des données dans le but ultime d'améliorer la performance du système de surveillance. Une difficulté fondamentale associée à un système d'imagerie thermique-visible est la mise en registre précise de caractéristiques et d'informations correspondantes à partir d'images avec des différences significatives dans les propriétés des signaux. Dans un cas, on capte des informations de couleur (lumière réfléchie) et dans l'autre cas, on capte la signature thermique (énergie émise). Ce problème est appelé mise en registre d'images et de séquences vidéo. La vidéosurveillance est l'un des domaines d'application le plus étendu de l'imagerie multi-spectrale. La vidéosurveillance automatique dans un environnement réel, que ce soit à l'intérieur ou à l'extérieur, est difficile en raison d'un nombre élevé de facteurs environnementaux tels que les variations d'éclairage, le vent, le brouillard, et les ombres. L'utilisation conjointe de différentes modalités permet d'augmenter la fiabilité des données d'entrée, et de révéler certaines informations sur la scène qui ne sont pas perceptibles par un système d'imagerie unimodal. Les premiers systèmes multimodaux de vidéosurveillance ont été conçus principalement pour des applications militaires. Mais de nos jours, en raison de la réduction du prix des caméras thermiques, ce sujet de recherche s'étend à des applications civiles ayant une variété d'objectifs. Les approches pour la mise en registre d'images pour un système multimodal de vidéosurveillance automatique sont divisées en deux catégories fondées sur la dimension de la scène: les approches qui sont appropriées pour des grandes scènes où les objets sont lointains, et les approches qui conviennent à de petites scènes où les objets sont près des caméras. Dans la littérature, ce sujet de recherche n'est pas bien documenté, en particulier pour le cas de petites scènes avec objets proches. Notre recherche est axée sur la conception de nouvelles solutions de mise en registre pour les deux catégories de scènes dans lesquels il y a plusieurs humains. Les solutions proposées sont incluses dans les quatre articles qui composent cette thèse. Nos méthodes de mise en registre sont des prétraitements pour d'autres tâches d'analyse vidéo telles que le suivi, la localisation de l'humain, l'analyse de comportements, et la catégorisation d'objets. Pour les scènes avec des objets lointains, nous proposons un système itératif qui fait de façon simultanée la mise en registre thermique-visible, la fusion des données et le suivi des personnes. Notre méthode de mise en registre est basée sur une mise en correspondance de trajectoires (en utilisant RANSAC) à partir desquelles on estime une matrice de transformation affine pour transformer globalement des objets d'avant-plan d'une image sur l'autre image. Notre système proposé de vidéosurveillance multimodale est basé sur un nouveau mécanisme de rétroaction entre la mise en registre et le module de suivi, ce qui augmente les performances des deux modules de manière itérative au fil du temps. Nos méthodes sont conçues pour des applications en ligne et aucune calibration des caméras ou de configurations particulières ne sont requises. Pour les petites scènes avec des objets proches, nous introduisons le descripteur Local Self-Similarity (LSS), comme une mesure de similarité viable pour mettre en correspondance les régions du corps humain dans des images thermiques et visibles. Nous avons également démontré théoriquement et quantitativement que LSS, comme mesure de similarité thermique-visible, est plus robuste aux différences entre les textures des régions correspondantes que l'information mutuelle (IM), qui est la mesure de similarité classique pour les applications multimodales. D'autres descripteurs viables, y compris Histogram Of Gradient (HOG), Scale Invariant Feature Transform (SIFT), et Binary Robust Independent Elementary Feature (BRIEF) sont également surclassés par LSS. En outre, nous proposons une approche de mise en registre utilisant LSS et un mécanisme de votes pour obtenir une carte de disparité stéréo dense pour chaque région d'avant-plan dans l'image. La carte de disparité qui en résulte peut alors être utilisée pour aligner l'image de référence sur la seconde image. Nous démontrons que notre méthode surpasse les méthodes dans l'état de l'art, notamment les méthodes basées sur l'information mutuelle. Nos expériences ont été réalisées en utilisant des scénarios réalistes de surveillance d'humains dans une scène de petite taille. En raison des lacunes des approches locales de correspondance stéréo pour l'estimation de disparités précises dans des régions de discontinuité de profondeur, nous proposons une méthode de correspondance stéréo basée sur une approche d'optimisation globale. Nous introduisons un modèle stéréo approprié pour la mise en registre d'images thermique-visible en utilisant une méthode de minimisation de l'énergie en conjonction avec la méthode Belief Propagation (BP) comme méthode pour optimiser l'affectation des disparités par une fonction d'énergie. Dans cette méthode, nous avons intégré les informations de couleur et de mouvement comme contraintes douces pour améliorer la précision d'affectation des disparités dans les cas de discontinuités de profondeur. Bien que les approches de correspondance globale soient plus gourmandes au niveau des ressources de calculs par rapport aux approches de correspondance locale basée sur la stratégie Winner Take All (WTA), l'algorithme efficace BP et la programmation parallèle (OpenMP) en C++ que nous avons utilisés dans notre implémentation, permettent d'accélérer le temps de traitement de manière significative et de rendre nos méthodes viables pour les applications de vidéosurveillance. Nos méthodes sont programmées en C++ et utilisent la bibliothèque OpenCV. Nos méthodes sont conçues pour être facilement intégrées comme prétraitement pour toute application d'analyse vidéo. En d'autres termes, les données d'entrée de nos méthodes pourraient être un flux vidéo en ligne, et pour une analyse plus approfondie, un nouveau module pourrait être ajouté en aval à notre schéma algorithmique. Cette analyse plus approfondie pourrait être le suivi d'objets, la localisation d'êtres humains, et l'analyse de trajectoires pour les applications de surveillance multimodales de grandes scène. Aussi, Il pourrait être l'analyse de comportements, la catégorisation d'objets, et le suivi pour les applications sur des scènes de tailles réduites.---------ABSTRACT Recently, the design and deployment of thermal-visible surveillance systems for human analysis attracted a lot of attention in the computer vision community. Thermal-visible imagery applications for human analysis span different domains including medical, in-vehicle safety system, and surveillance. The motivation of applying such a system is improving the quality of data with the ultimate goal of improving the performance of targeted surveillance system. A fundamental issue associated with a thermal-visible imaging system is the accurate registration of corresponding features and information from images with high differences in imaging characteristics, where one reflects the color information (reflected energy) and another one reflects thermal signature (emitted energy). This problem is named Image/video registration. Video surveillance is one of the most extensive application domains of multispectral imaging. Automatic video surveillance in a realistic environment, either indoor or outdoor, is difficult due to the unlimited number of environmental factors such as illumination variations, wind, fog, and shadows. In a multimodal surveillance system, the joint use of different modalities increases the reliability of input data and reveals some information of the scene that might be missed using a unimodal imaging system. The early multimodal video surveillance systems were designed mainly for military applications. But nowadays, because of the reduction in the price of thermal cameras, this subject of research is extending to civilian applications and has attracted more interests for a variety of the human monitoring objectives. Image registration approaches for an automatic multimodal video surveillance system are divided into two general approaches based on the range of captured scene: the approaches that are appropriate for long-range scenes, and the approaches that are suitable for close-range scenes. In the literature, this subject of research is not well documented, especially for close-range surveillance application domains. Our research is focused on novel image registration solutions for both close-range and long-range scenes featuring multiple humans. The proposed solutions are presented in the four articles included in this thesis. Our registration methods are applicable for further video analysis such as tracking, human localization, behavioral pattern analysis, and object categorization. For far-range video surveillance, we propose an iterative system that consists of simultaneous thermal-visible video registration, sensor fusion, and people tracking. Our video registration is based on a RANSAC object trajectory matching, which estimates an affine transformation matrix to globally transform foreground objects of one image on another one. Our proposed multimodal surveillance system is based on a novel feedback scheme between registration and tracking modules that augments the performance of both modules iteratively over time. Our methods are designed for online applications and no camera calibration or special setup is required. For close-range video surveillance applications, we introduce Local Self-Similarity (LSS) as a viable similarity measure for matching corresponding human body regions of thermal and visible images. We also demonstrate theoretically and quantitatively that LSS, as a thermal-visible similarity measure, is more robust to differences between corresponding regions' textures than the Mutual Information (MI), which is the classic multimodal similarity measure. Other viable local image descriptors including Histogram Of Gradient (HOG), Scale Invariant Feature Transform (SIFT), and Binary Robust Independent Elementary Feature (BRIEF) are also outperformed by LSS. Moreover, we propose a LSS-based dense local stereo correspondence algorithm based on a voting approach, which estimates a dense disparity map for each foreground region in the image. The resulting disparity map can then be used to align the reference image on the second image. We demonstrate that our proposed LSS-based local registration method outperforms similar state-of-the-art MI-based local registration methods in the literature. Our experiments were carried out using realistic human monitoring scenarios in a close-range scene. Due to the shortcomings of local stereo correspondence approaches for estimating accurate disparities in depth discontinuity regions, we propose a novel stereo correspondence method based on a global optimization approach. We introduce a stereo model appropriate for thermal-visible image registration using an energy minimization framework and Belief Propagation (BP) as a method to optimize the disparity assignment via an energy function. In this method, we integrated color and motion visual cues as a soft constraint into an energy function to improve disparity assignment accuracy in depth discontinuities. Although global correspondence approaches are computationally more expensive compared to Winner Take All (WTA) local correspondence approaches, the efficient BP algorithm and parallel processing programming (openMP) in C++ that we used in our implementation, speed up the processing time significantly and make our methods viable for video surveillance applications. Our methods are implemented in C++ using OpenCV library and object-oriented programming. Our methods are designed to be integrated easily for further video analysis. In other words, the input data of our methods could come from two synchronized online video streams. For further analysis a new module could be added in our frame-by-frame algorithmic diagram. Further analysis might be object tracking, human localization, and trajectory pattern analysis for multimodal long-range monitoring applications, and behavior pattern analysis, object categorization, and tracking for close-range applications

    Improved Depth Recovery In Consumer Depth Cameras via Disparity Space Fusion within Cross-spectral Stereo

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    We address the issue of improving depth coverage in consumer depth cameras based on the combined use of cross-spectral stereo and near infra-red structured light sensing. Specifically we show that fusion of disparity over these modalities, within the disparity space image, prior to disparity optimization facilitates the recovery of scene depth information in regions where structured light sensing fails. We show that this joint approach, leveraging disparity information from both structured light and cross-spectral sensing, facilitates the joint recovery of global scene depth comprising both texture-less object depth, where conventional stereo otherwise fails, and highly reflective object depth, where structured light (and similar) active sensing commonly fails. The proposed solution is illustrated using dense gradient feature matching and shown to outperform prior approaches that use late-stage fused cross-spectral stereo depth as a facet of improved sensing for consumer depth cameras

    Learning Mid-Level Representations for Visual Recognition

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    The objective of this thesis is to enhance visual recognition for objects and scenes through the development of novel mid-level representations and appendent learning algorithms. In particular, this work is focusing on category level recognition which is still a very challenging and mainly unsolved task. One crucial component in visual recognition systems is the representation of objects and scenes. However, depending on the representation, suitable learning strategies need to be developed that make it possible to learn new categories automatically from training data. Therefore, the aim of this thesis is to extend low-level representations by mid-level representations and to develop suitable learning mechanisms. A popular kind of mid-level representations are higher order statistics such as self-similarity and co-occurrence statistics. While these descriptors are satisfying the demand for higher-level object representations, they are also exhibiting very large and ever increasing dimensionality. In this thesis a new object representation, based on curvature self-similarity, is suggested that goes beyond the currently popular approximation of objects using straight lines. However, like all descriptors using second order statistics, it also exhibits a high dimensionality. Although improving discriminability, the high dimensionality becomes a critical issue due to lack of generalization ability and curse of dimensionality. Given only a limited amount of training data, even sophisticated learning algorithms such as the popular kernel methods are not able to suppress noisy or superfluous dimensions of such high-dimensional data. Consequently, there is a natural need for feature selection when using present-day informative features and, particularly, curvature self-similarity. We therefore suggest an embedded feature selection method for support vector machines that reduces complexity and improves generalization capability of object models. The proposed curvature self-similarity representation is successfully integrated together with the embedded feature selection in a widely used state-of-the-art object detection framework. The influence of higher order statistics for category level object recognition, is further investigated by learning co-occurrences between foreground and background, to reduce the number of false detections. While the suggested curvature self-similarity descriptor is improving the model for more detailed description of the foreground, higher order statistics are now shown to be also suitable for explicitly modeling the background. This is of particular use for the popular chamfer matching technique, since it is prone to accidental matches in dense clutter. As clutter only interferes with the foreground model contour, we learn where to place the background contours with respect to the foreground object boundary. The co-occurrence of background contours is integrated into a max-margin framework. Thus the suggested approach combines the advantages of accurately detecting object parts via chamfer matching and the robustness of max-margin learning. While chamfer matching is very efficient technique for object detection, parts are only detected based on a simple distance measure. Contrary to that, mid-level parts and patches are explicitly trained to distinguish true positives in the foreground from false positives in the background. Due to the independence of mid-level patches and parts it is possible to train a large number of instance specific part classifiers. This is contrary to the current most powerful discriminative approaches that are typically only feasible for a small number of parts, as they are modeling the spatial dependencies between them. Due to their number, we cannot directly train a powerful classifier to combine all parts. Instead, parts are randomly grouped into fewer, overlapping compositions that are trained using a maximum-margin approach. In contrast to the common rationale of compositional approaches, we do not aim for semantically meaningful ensembles. Rather we seek randomized compositions that are discriminative and generalize over all instances of a category. Compositions are all combined by a non-linear decision function which is completing the powerful hierarchy of discriminative classifiers. In summary, this thesis is improving visual recognition of objects and scenes, by developing novel mid-level representations on top of different kinds of low-level representations. Furthermore, it investigates in the development of suitable learning algorithms, to deal with the new challenges that are arising form the novel object representations presented in this work

    Deep Learning With Effective Hierarchical Attention Mechanisms in Perception of Autonomous Vehicles

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    Autonomous vehicles need to gather and understand information from their surroundings to drive safely. Just like how we look around and understand what\u27s happening on the road, these vehicles need to see and make sense of dynamic objects like other cars, pedestrians, and cyclists, and static objects like crosswalks, road barriers, and stop lines. In this dissertation, we aim to figure out better ways for computers to understand their surroundings in the 3D object detection task and map segmentation task. The 3D object detection task automatically spots objects in 3D (like cars or cyclists) and the map segmentation task automatically divides maps into different sections. To do this, we use attention modules to help the computer focus on important items. We create one network to find 3D objects such as cars on a highway, and one network to divide different parts of a map into different regions. Each of the networks utilizes the attention module and its hierarchical attention module to achieve comparable results with the best methods on challenging benchmarks. We name the 3D object detection network as Point Cloud Detection Network (PCDet), which utilizes LiDAR sensors to obtain the point cloud inputs with accurate depth information. To solve the problem of lacking multi-scale features and using the high-semantic features ineffectively, the proposed PCDet utilizes Hierarchical Double-branch Spatial Attention (HDSA) to capture high-level and low-level features at the same time. PCDet applies the Double-branch Spatial Attention (DSA) at the early stage and the late stage of the network, which helps to use the high-level features at the beginning of the network and obtain the multiple-scale features. However, HDSA does not consider global relational information. This limitation is solved by Hierarchical Residual Graph Convolutional Attention (HRGCA). PCDet applies the HRGCA module, which contains both graph and coordinate information, to not only effectively acquire the global information but also efficiently estimate contextual relationships of the global information in the 3D point cloud. We name the map segmentation network as Multi-View Segmentation in Bird\u27s-Eye-View (BEVSeg), which utilizes multiple cameras to obtain multi-view image inputs with plenty of colorful and textured information. The proposed BEVSeg aims to utilize high-level features effectively and solve the common overfitting problems in map segmentation tasks. Specifically, BEVSeg utilizes an Aligned BEV domain data Augmentation (ABA) module to flip, rotate, and scale the BEV feature map and repeat the same process on its ground truths to address overfitting issues. It further incorporates the hierarchical attention mechanisms, namely, HDSA and HRGCA, to effectively capture high-level and low-level features and to estimate global relationships between different regions in both the early stage and the late stage of the network, respectively. In general, the proposed HDSA is able to capture the high-level features and help utilize the high-level features effectively in both LiDAR-based 3D object detection and multiple camera-based map segmentation tasks, i.e. PCDet and BEVSeg. In addition, we proposed a new effective HRGCA to further capture global relationships between different regions to improve both 3D object detection accuracy and map segmentation performance

    Wave interference network with a wave function for traffic sign recognition

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    In this paper, we successfully combine convolution with a wave function to build an effective and efficient classifier for traffic signs, named the wave interference network (WiNet). In the WiNet, the feature map extracted by the convolutional filters is refined into many entities from an input image. Each entity is represented as a wave. We utilize Euler's formula to unfold the wave function. Based on the wave-like information representation, the model modulates the relationship between the entities and the fixed weights of convolution adaptively. Experiment results on the Chinese Traffic Sign Recognition Database (CTSRD) and the German Traffic Sign Recognition Benchmark (GTSRB) demonstrate that the performance of the presented model is better than some other models, such as ResMLP, ResNet50, PVT and ViT in the following aspects: 1) WiNet obtains the best accuracy rate with 99.80% on the CTSRD and recognizes all images exactly on the GTSRB; 2) WiNet gains better robustness on the dataset with different noises compared with other models; 3) WiNet has a good generalization on different datasets

    A Compilation of Methods and Datasets for Group and Crowd Action Recognition

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    The human behaviour analysis has been a subject of study in various fields of science (e.g. sociology, psychology, computer science). Specifically, the automated understanding of the behaviour of both individuals and groups remains a very challenging problem from the sensor systems to artificial intelligence techniques. Being aware of the extent of the topic, the objective of this paper is to review the state of the art focusing on machine learning techniques and computer vision as sensor system to the artificial intelligence techniques. Moreover, a lack of review comparing the level of abstraction in terms of activities duration is found in the literature. In this paper, a review of the methods and techniques based on machine learning to classify group behaviour in sequence of images is presented. The review takes into account the different levels of understanding and the number of people in the group
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