1,220 research outputs found

    CentralNet: a Multilayer Approach for Multimodal Fusion

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    This paper proposes a novel multimodal fusion approach, aiming to produce best possible decisions by integrating information coming from multiple media. While most of the past multimodal approaches either work by projecting the features of different modalities into the same space, or by coordinating the representations of each modality through the use of constraints, our approach borrows from both visions. More specifically, assuming each modality can be processed by a separated deep convolutional network, allowing to take decisions independently from each modality, we introduce a central network linking the modality specific networks. This central network not only provides a common feature embedding but also regularizes the modality specific networks through the use of multi-task learning. The proposed approach is validated on 4 different computer vision tasks on which it consistently improves the accuracy of existing multimodal fusion approaches

    Interaction intermodale dans les réseaux neuronaux profonds pour la classification et la localisation d'évènements audiovisuels

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    La compréhension automatique du monde environnant a de nombreuses applications telles que la surveillance et sécurité, l'interaction Homme-Machine, la robotique, les soins de santé, etc. Plus précisément, la compréhension peut s'exprimer par le biais de différentes taches telles que la classification et localisation dans l'espace d'évènements. Les êtres vivants exploitent un maximum de l'information disponible pour comprendre ce qui les entoure. En s'inspirant du comportement des êtres vivants, les réseaux de neurones artificiels devraient également utiliser conjointement plusieurs modalités, par exemple, la vision et l'audition. Premièrement, les modèles de classification et localisation, basés sur l'information audio-visuelle, doivent être évalués de façon objective. Nous avons donc enregistré une nouvelle base de données pour compléter les bases actuellement disponibles. Comme aucun modèle audio-visuel de classification et localisation n'existe, seule la partie sonore de la base est évaluée avec un modèle de la littérature. Deuxièmement, nous nous concentrons sur le cœur de la thèse: comment utiliser conjointement de l'information visuelle et sonore pour résoudre une tâche spécifique, la reconnaissance d'évènements. Le cerveau n'est pas constitué d'une "simple" fusion mais comprend de multiples interactions entre les deux modalités. Il y a un couplage important entre le traitement de l'information visuelle et sonore. Les réseaux de neurones offrent la possibilité de créer des interactions entre les modalités en plus de la fusion. Dans cette thèse, nous explorons plusieurs stratégies pour fusionner les modalités visuelles et sonores et pour créer des interactions entre les modalités. Ces techniques ont les meilleures performances en comparaison aux architectures de l'état de l'art au moment de la publication. Ces techniques montrent l'utilité de la fusion audio-visuelle mais surtout l'importance des interactions entre les modalités. Pour conclure la thèse, nous proposons un réseau de référence pour la classification et localisation d'évènements audio-visuels. Ce réseau a été testé avec la nouvelle base de données. Les modèles précédents de classification sont modifiés pour prendre en compte la localisation dans l'espace en plus de la classification.Abstract: The automatic understanding of the surrounding world has a wide range of applications, including surveillance, human-computer interaction, robotics, health care, etc. The understanding can be expressed in several ways such as event classification and its localization in space. Living beings exploit a maximum of the available information to understand the surrounding world. Artificial neural networks should build on this behavior and jointly use several modalities such as vision and hearing. First, audio-visual networks for classification and localization must be evaluated objectively. We recorded a new audio-visual dataset to fill a gap in the current available datasets. We were not able to find audio-visual models for classification and localization. Only the dataset audio part is evaluated with a state-of-the-art model. Secondly, we focus on the main challenge of the thesis: How to jointly use visual and audio information to solve a specific task, event recognition. The brain does not comprise a simple fusion but has multiple interactions between the two modalities to create a strong coupling between them. The neural networks offer the possibility to create interactions between the two modalities in addition to the fusion. We explore several strategies to fuse the audio and visual modalities and to create interactions between modalities. These techniques have the best performance compared to the state-of-the-art architectures at the time of publishing. They show the usefulness of audio-visual fusion but above all the contribution of the interaction between modalities. To conclude, we propose a benchmark for audio-visual classification and localization on the new dataset. Previous models for the audio-visual classification are modified to address the localization in addition to the classification

    FusionSense: Emotion Classification using Feature Fusion of Multimodal Data and Deep learning in a Brain-inspired Spiking Neural Network

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    Using multimodal signals to solve the problem of emotion recognition is one of the emerging trends in affective computing. Several studies have utilized state of the art deep learning methods and combined physiological signals, such as the electrocardiogram (EEG), electroencephalogram (ECG), skin temperature, along with facial expressions, voice, posture to name a few, in order to classify emotions. Spiking neural networks (SNNs) represent the third generation of neural networks and employ biologically plausible models of neurons. SNNs have been shown to handle Spatio-temporal data, which is essentially the nature of the data encountered in emotion recognition problem, in an efficient manner. In this work, for the first time, we propose the application of SNNs in order to solve the emotion recognition problem with the multimodal dataset. Specifically, we use the NeuCube framework, which employs an evolving SNN architecture to classify emotional valence and evaluate the performance of our approach on the MAHNOB-HCI dataset. The multimodal data used in our work consists of facial expressions along with physiological signals such as ECG, skin temperature, skin conductance, respiration signal, mouth length, and pupil size. We perform classification under the Leave-One-Subject-Out (LOSO) cross-validation mode. Our results show that the proposed approach achieves an accuracy of 73.15% for classifying binary valence when applying feature-level fusion, which is comparable to other deep learning methods. We achieve this accuracy even without using EEG, which other deep learning methods have relied on to achieve this level of accuracy. In conclusion, we have demonstrated that the SNN can be successfully used for solving the emotion recognition problem with multimodal data and also provide directions for future research utilizing SNN for Affective computing. In addition to the good accuracy, the SNN recognition system is requires incrementally trainable on new data in an adaptive way. It only one pass training, which makes it suitable for practical and on-line applications. These features are not manifested in other methods for this problem.Peer reviewe
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