103 research outputs found

    Development Of A High Performance Mosaicing And Super-Resolution Algorithm

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    In this dissertation, a high-performance mosaicing and super-resolution algorithm is described. The scale invariant feature transform (SIFT)-based mosaicing algorithm builds an initial mosaic which is iteratively updated by the robust super resolution algorithm to achieve the final high-resolution mosaic. Two different types of datasets are used for testing: high altitude balloon data and unmanned aerial vehicle data. To evaluate our algorithm, five performance metrics are employed: mean square error, peak signal to noise ratio, singular value decomposition, slope of reciprocal singular value curve, and cumulative probability of blur detection. Extensive testing shows that the proposed algorithm is effective in improving the captured aerial data and the performance metrics are accurate in quantifying the evaluation of the algorithm

    Image Mosaicing and Super-resolution

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    Construction de mosaïques de super-résolution à partir de la vidéo de basse résolution. Application au résumé vidéo et la dissimulation d'erreurs de transmission.

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    La numĂ©risation des vidĂ©os existantes ainsi que le dĂ©veloppement explosif des services multimĂ©dia par des rĂ©seaux comme la diffusion de la tĂ©lĂ©vision numĂ©rique ou les communications mobiles ont produit une Ă©norme quantitĂ© de vidĂ©os compressĂ©es. Ceci nĂ©cessite des outils d’indexation et de navigation efficaces, mais une indexation avant l’encodage n’est pas habituelle. L’approche courante est le dĂ©codage complet des ces vidĂ©os pour ensuite crĂ©er des indexes. Ceci est trĂšs coĂ»teux et par consĂ©quent non rĂ©alisable en temps rĂ©el. De plus, des informations importantes comme le mouvement, perdus lors du dĂ©codage, sont reestimĂ©es bien que dĂ©jĂ  prĂ©sentes dans le flux comprimĂ©. Notre but dans cette thĂšse est donc la rĂ©utilisation des donnĂ©es dĂ©jĂ  prĂ©sents dans le flux comprimĂ© MPEG pour l’indexation et la navigation rapide. Plus prĂ©cisĂ©ment, nous extrayons des coefficients DC et des vecteurs de mouvement. Dans le cadre de cette thĂšse, nous nous sommes en particulier intĂ©ressĂ©s Ă  la construction de mosaĂŻques Ă  partir des images DC extraites des images I. Une mosaĂŻque est construite par recalage et fusion de toutes les images d’une sĂ©quence vidĂ©o dans un seul systĂšme de coordonnĂ©es. Ce dernier est en gĂ©nĂ©ral alignĂ© avec une des images de la sĂ©quence : l’image de rĂ©fĂ©rence. Il en rĂ©sulte une seule image qui donne une vue globale de la sĂ©quence. Ainsi, nous proposons dans cette thĂšse un systĂšme complet pour la construction des mosaĂŻques Ă  partir du flux MPEG-1/2 qui tient compte de diffĂ©rentes problĂšmes apparaissant dans des sĂ©quences vidĂ©o rĂ©eles, comme par exemple des objets en mouvment ou des changements d’éclairage. Une tĂąche essentielle pour la construction d’une mosaĂŻque est l’estimation de mouvement entre chaque image de la sĂ©quence et l’image de rĂ©fĂ©rence. Notre mĂ©thode se base sur une estimation robuste du mouvement global de la camĂ©ra Ă  partir des vecteurs de mouvement des images P. Cependant, le mouvement global de la camĂ©ra estimĂ© pour une image P peut ĂȘtre incorrect car il dĂ©pend fortement de la prĂ©cision des vecteurs encodĂ©s. Nous dĂ©tectons les images P concernĂ©es en tenant compte des coefficients DC de l’erreur encodĂ©e associĂ©e et proposons deux mĂ©thodes pour corriger ces mouvements. UnemosaĂŻque construite Ă  partir des images DC a une rĂ©solution trĂšs faible et souffre des effets d’aliasing dus Ă  la nature des images DC. Afin d’augmenter sa rĂ©solution et d’amĂ©liorer sa qualitĂ© visuelle, nous appliquons une mĂ©thode de super-rĂ©solution basĂ©e sur des rĂ©tro-projections itĂ©ratives. Les mĂ©thodes de super-rĂ©solution sont Ă©galement basĂ©es sur le recalage et la fusion des images d’une sĂ©quence vidĂ©o, mais sont accompagnĂ©es d’une restauration d’image. Dans ce cadre, nous avons dĂ©veloppĂ© une nouvellemĂ©thode d’estimation de flou dĂ» au mouvement de la camĂ©ra ainsi qu’une mĂ©thode correspondante de restauration spectrale. La restauration spectrale permet de traiter le flou globalement, mais, dans le cas des obvi jets ayant un mouvement indĂ©pendant du mouvement de la camĂ©ra, des flous locaux apparaissent. C’est pourquoi, nous proposons un nouvel algorithme de super-rĂ©solution dĂ©rivĂ© de la restauration spatiale itĂ©rative de Van Cittert et Jansson permettant de restaurer des flous locaux. En nous basant sur une segmentation d’objets en mouvement, nous restaurons sĂ©parĂ©ment lamosaĂŻque d’arriĂšre-plan et les objets de l’avant-plan. Nous avons adaptĂ© notre mĂ©thode d’estimation de flou en consĂ©quence. Dans une premier temps, nous avons appliquĂ© notre mĂ©thode Ă  la construction de rĂ©sumĂ© vidĂ©o avec pour l’objectif la navigation rapide par mosaĂŻques dans la vidĂ©o compressĂ©e. Puis, nous Ă©tablissions comment la rĂ©utilisation des rĂ©sultats intermĂ©diaires sert Ă  d’autres tĂąches d’indexation, notamment Ă  la dĂ©tection de changement de plan pour les images I et Ă  la caractĂ©risation dumouvement de la camĂ©ra. Enfin, nous avons explorĂ© le domaine de la rĂ©cupĂ©ration des erreurs de transmission. Notre approche consiste en construire une mosaĂŻque lors du dĂ©codage d’un plan ; en cas de perte de donnĂ©es, l’information manquante peut ĂȘtre dissimulĂ©e grace Ă  cette mosaĂŻque

    Place Recognition and Localization for Multi-Modal Underwater Navigation with Vision and Acoustic Sensors

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    Place recognition and localization are important topics in both robotic navigation and computer vision. They are a key prerequisite for simultaneous localization and mapping (SLAM) systems, and also important for long-term robot operation when registering maps generated at different times. The place recognition and relocalization problem is more challenging in the underwater environment because of four main factors: 1) changes in illumination; 2) long-term changes in the physical appearance of features in the aqueous environment attributable to biofouling and the natural growth, death, and movement of living organisms; 3) low density of reliable visual features; and 4) low visibility in a turbid environment. There is no one perceptual modality for underwater vehicles that can single-handedly address all the challenges of underwater place recognition and localization. This thesis proposes novel research in place recognition methods for underwater robotic navigation using both acoustic and optical imaging modalities. We develop robust place recognition algorithms using both optical cameras and a Forward-looking Sonar (FLS) for an active visual SLAM system that addresses the challenges mentioned above. We first design an optical image matching algorithm using high-level features to evaluate image similarity against dramatic appearance changes and low image feature density. A localization algorithm is then built upon this method combining both image similarity and measurements from other navigation sensors, which enables a vehicle to localize itself to maps temporally separated over the span of years. Next, we explore the potential of FLS in the place recognition task. The weak feature texture and high noise level in sonar images increase the difficulty in making correspondences among them. We learn descriptive image-level features using a convolutional neural network (CNN) with the data collected for our ship hull inspection mission. These features present outstanding performance in sonar image matching, which can be used for effective loop-closure proposal for SLAM as well as multi-session SLAM registration. Building upon this, we propose a pre-linearization approach to leverage this type of general high-dimensional abstracted feature in a real-time recursive Bayesian filtering framework, which results in the first real-time recursive localization framework using this modality. Finally, we propose a novel pose-graph SLAM algorithm leveraging FLS as the perceptual sensors providing constraints for drift correction. In this algorithm, we address practical problems that arise when using an FLS for SLAM, including feature sparsity, low reliability in data association and geometry estimation. More specifically, we propose a novel approach to pruning out less-informative sonar frames that improve system efficiency and reliability. We also employ local bundle adjustment to optimize the geometric constraints between sonar frames and use the mechanism to avoid degenerate motion patterns. All the proposed contributions are evaluated with real-data collected for ship hull inspection. The experimental results outperform existent benchmarks. The culmination of these contributions is a system capable of performing underwater SLAM with both optical and acoustic imagery gathered across years under challenging imaging conditions.PHDElectrical Engineering: SystemsUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttps://deepblue.lib.umich.edu/bitstream/2027.42/140835/1/ljlijie_1.pd

    Processing Camera-captured Document Images: Geometric Rectification, Mosaicing, and Layout Structure Recognition

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    This dissertation explores three topics: 1) geometric rectification of cameracaptured document images, 2) camera-captured document mosaicing, and 3) layout structure recognition. The first two topics pertain to camera-based document image analysis, a new trend within the OCR community. Compared to typical scanners,cameras offer convenient, flexible, portable, and non-contact image capture, which enables many new applications and breathes new life into existing ones. The third topic is related to the need for efficient metadata extraction methods, critical for managing digitized documents. The kernel of our geometric rectification framework is a novel method for estimating document shape from a single camera-captured image. Our method uses texture flows detected in printed text areas and is insensitive to occlusion. Classification of planar versus curved documents is done automatically. For planar pages, we obtain full metric rectification. For curved pages, we estimate a planar-strip approximation based on properties of developable surfaces. Our method can process any planar or smoothly curved document captured from an arbitrary position without requiring 3D data, metric data, or camera calibration. For the second topic, we design a novel registration method for document images, which produces good results in difficult situations including large displacements, severe projective distortion, small overlapping areas, and lack of distinguishable feature points. We implement a selective image composition method that outperforms conventional image blending methods in overlapping areas. It eliminates double images caused by mis-registration and preserves the sharpness in overlapping areas. We solve the third topic with a graph-based model matching framework. Layout structures are modeled by graphs, which integrate local and global features and are extensible to new features in the future. Our model can handle large variation within a class and subtle differences between classes. Through graph matching, the layout structure of a document is discovered. Our layout structure recognition technique accomplishes document classification and logical component labeling at the same time. Our model learning method enables a model to adapt to changes in classes over time

    Large-area visually augmented navigation for autonomous underwater vehicles

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    Submitted to the Joint Program in Applied Ocean Science & Engineering in partial fulfillment of the requirements for the degree of Doctor of Philosophy at the Massachusetts Institute of Technology and the Woods Hole Oceanographic Institution June 2005This thesis describes a vision-based, large-area, simultaneous localization and mapping (SLAM) algorithm that respects the low-overlap imagery constraints typical of autonomous underwater vehicles (AUVs) while exploiting the inertial sensor information that is routinely available on such platforms. We adopt a systems-level approach exploiting the complementary aspects of inertial sensing and visual perception from a calibrated pose-instrumented platform. This systems-level strategy yields a robust solution to underwater imaging that overcomes many of the unique challenges of a marine environment (e.g., unstructured terrain, low-overlap imagery, moving light source). Our large-area SLAM algorithm recursively incorporates relative-pose constraints using a view-based representation that exploits exact sparsity in the Gaussian canonical form. This sparsity allows for efficient O(n) update complexity in the number of images composing the view-based map by utilizing recent multilevel relaxation techniques. We show that our algorithmic formulation is inherently sparse unlike other feature-based canonical SLAM algorithms, which impose sparseness via pruning approximations. In particular, we investigate the sparsification methodology employed by sparse extended information filters (SEIFs) and offer new insight as to why, and how, its approximation can lead to inconsistencies in the estimated state errors. Lastly, we present a novel algorithm for efficiently extracting consistent marginal covariances useful for data association from the information matrix. In summary, this thesis advances the current state-of-the-art in underwater visual navigation by demonstrating end-to-end automatic processing of the largest visually navigated dataset to date using data collected from a survey of the RMS Titanic (path length over 3 km and 3100 m2 of mapped area). This accomplishment embodies the summed contributions of this thesis to several current SLAM research issues including scalability, 6 degree of freedom motion, unstructured environments, and visual perception.This work was funded in part by the CenSSIS ERC of the National Science Foundation under grant EEC-9986821, in part by the Woods Hole Oceanographic Institution through a grant from the Penzance Foundation, and in part by a NDSEG Fellowship awarded through the Department of Defense

    Vision Based Extraction of Nutrition Information from Skewed Nutrition Labels

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    An important component of a healthy diet is the comprehension and retention of nutritional information and understanding of how different food items and nutritional constituents affect our bodies. In the U.S. and many other countries, nutritional information is primarily conveyed to consumers through nutrition labels (NLs) which can be found in all packaged food products. However, sometimes it becomes really challenging to utilize all this information available in these NLs even for consumers who are health conscious as they might not be familiar with nutritional terms or find it difficult to integrate nutritional data collection into their daily activities due to lack of time, motivation, or training. So it is essential to automate this data collection and interpretation process by integrating Computer Vision based algorithms to extract nutritional information from NLs because it improves the user’s ability to engage in continuous nutritional data collection and analysis. To make nutritional data collection more manageable and enjoyable for the users, we present a Proactive NUTrition Management System (PNUTS). PNUTS seeks to shift current research and clinical practices in nutrition management toward persuasion, automated nutritional information processing, and context-sensitive nutrition decision support. PNUTS consists of two modules, firstly a barcode scanning module which runs on smart phones and is capable of vision-based localization of One Dimensional (1D) Universal Product Code (UPC) and International Article Number (EAN) barcodes with relaxed pitch, roll, and yaw camera alignment constraints. The algorithm localizes barcodes in images by computing Dominant Orientations of Gradients (DOGs) of image segments and grouping smaller segments with similar DOGs into larger connected components. Connected components that pass given morphological criteria are marked as potential barcodes. The algorithm is implemented in a distributed, cloud-based system. The system’s front end is a smartphone application that runs on Android smartphones with Android 4.2 or higher. The system’s back end is deployed on a five node Linux cluster where images are processed. The algorithm was evaluated on a corpus of 7,545 images extracted from 506 videos of bags, bottles, boxes, and cans in a supermarket. The DOG algorithm was coupled to our in-place scanner for 1D UPC and EAN barcodes. The scanner receives from the DOG algorithm the rectangular planar dimensions of a connected component and the component’s dominant gradient orientation angle referred to as the skew angle. The scanner draws several scan lines at that skew angle within the component to recognize the barcode in place without any rotations. The scanner coupled to the localizer was tested on the same corpus of 7,545 images. Laboratory experiments indicate that the system can localize and scan barcodes of any orientation in the yaw plane, of up to 73.28 degrees in the pitch plane, and of up to 55.5 degrees in the roll plane. The videos have been made public for all interested research communities to replicate our findings or to use them in their own research. The front end Android application is available for free download at Google Play under the title of NutriGlass. This module is also coupled to a comprehensive NL database from which nutritional information can be retrieved on demand. Currently our NL database consists of more than 230,000 products. The second module of PNUTS is an algorithm whose objective is to determine the text skew angle of an NL image without constraining the angle’s magnitude. The horizontal, vertical, and diagonal matrices of the (Two Dimensional) 2D Haar Wavelet Transform are used to identify 2D points with significant intensity changes. The set of points is bounded with a minimum area rectangle whose rotation angle is the text’s skew. The algorithm’s performance is compared with the performance of five text skew detection algorithms on 1001 U.S. nutrition label images and 2200 single- and multi-column document images in multiple languages. To ensure the reproducibility of the reported results, the source code of the algorithm and the image data have been made publicly available. If the skew angle is estimated correctly, optical character recognition (OCR) techniques can be used to extract nutrition information

    Content-based image retrieval of museum images

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    Content-based image retrieval (CBIR) is becoming more and more important with the advance of multimedia and imaging technology. Among many retrieval features associated with CBIR, texture retrieval is one of the most difficult. This is mainly because no satisfactory quantitative definition of texture exists at this time, and also because of the complex nature of the texture itself. Another difficult problem in CBIR is query by low-quality images, which means attempts to retrieve images using a poor quality image as a query. Not many content-based retrieval systems have addressed the problem of query by low-quality images. Wavelet analysis is a relatively new and promising tool for signal and image analysis. Its time-scale representation provides both spatial and frequency information, thus giving extra information compared to other image representation schemes. This research aims to address some of the problems of query by texture and query by low quality images by exploiting all the advantages that wavelet analysis has to offer, particularly in the context of museum image collections. A novel query by low-quality images algorithm is presented as a solution to the problem of poor retrieval performance using conventional methods. In the query by texture problem, this thesis provides a comprehensive evaluation on wavelet-based texture method as well as comparison with other techniques. A novel automatic texture segmentation algorithm and an improved block oriented decomposition is proposed for use in query by texture. Finally all the proposed techniques are integrated in a content-based image retrieval application for museum image collections
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