700 research outputs found

    View-based models for visual tracking and recognition

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    Ph.DDOCTOR OF PHILOSOPH

    Machine Analysis of Facial Expressions

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    An Analysis of Facial Expression Recognition Techniques

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    In present era of technology , we need applications which could be easy to use and are user-friendly , that even people with specific disabilities use them easily. Facial Expression Recognition has vital role and challenges in communities of computer vision, pattern recognition which provide much more attention due to potential application in many areas such as human machine interaction, surveillance , robotics , driver safety, non- verbal communication, entertainment, health- care and psychology study. Facial Expression Recognition has major importance ration in face recognition for significant image applications understanding and analysis. There are many algorithms have been implemented on different static (uniform background, identical poses, similar illuminations ) and dynamic (position variation, partial occlusion orientation, varying lighting )conditions. In general way face expression recognition consist of three main steps first is face detection then feature Extraction and at last classification. In this survey paper we discussed different types of facial expression recognition techniques and various methods which is used by them and their performance measures

    Mitigating the effect of covariates in face recognition

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    Current face recognition systems capture faces of cooperative individuals in controlled environment as part of the face recognition process. It is therefore possible to control lighting, pose, background, and quality of images. However, in a real world application, we have to deal with both ideal and imperfect data. Performance of current face recognition systems is affected for such non-ideal and challenging cases. This research focuses on designing algorithms to mitigate the effect of covariates in face recognition.;To address the challenge of facial aging, an age transformation algorithm is proposed that registers two face images and minimizes the aging variations. Unlike the conventional method, the gallery face image is transformed with respect to the probe face image and facial features are extracted from the registered gallery and probe face images. The variations due to disguises cause change in visual perception, alter actual data, make pertinent facial information disappear, mask features to varying degrees, or introduce extraneous artifacts in the face image. To recognize face images with variations due to age progression and disguises, a granular face verification approach is designed which uses dynamic feed-forward neural architecture to extract 2D log polar Gabor phase features at different granularity levels. The granular levels provide non-disjoint spatial information which is combined using the proposed likelihood ratio based Support Vector Machine match score fusion algorithm. The face verification algorithm is validated using five face databases including the Notre Dame face database, FG-Net face database and three disguise face databases.;The information in visible spectrum images is compromised due to improper illumination whereas infrared images provide invariance to illumination and expression. A multispectral face image fusion algorithm is proposed to address the variations in illumination. The Support Vector Machine based image fusion algorithm learns the properties of the multispectral face images at different resolution and granularity levels to determine optimal information and combines them to generate a fused image. Experiments on the Equinox and Notre Dame multispectral face databases show that the proposed algorithm outperforms existing algorithms. We next propose a face mosaicing algorithm to address the challenge due to pose variations. The mosaicing algorithm generates a composite face image during enrollment using the evidence provided by frontal and semiprofile face images of an individual. Face mosaicing obviates the need to store multiple face templates representing multiple poses of a users face image. Experiments conducted on three different databases indicate that face mosaicing offers significant benefits by accounting for the pose variations that are commonly observed in face images.;Finally, the concept of online learning is introduced to address the problem of classifier re-training and update. A learning scheme for Support Vector Machine is designed to train the classifier in online mode. This enables the classifier to update the decision hyperplane in order to account for the newly enrolled subjects. On a heterogeneous near infrared face database, the case study using Principal Component Analysis and C2 feature algorithms shows that the proposed online classifier significantly improves the verification performance both in terms of accuracy and computational time

    Facial feature point tracking based on a graphical model framework

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    In this thesis a facial feature point tracker that can be used in applications such as human-computer interfaces, facial expression analysis systems, driver fatigue detection systems, etc. is proposed. The proposed tracker is based on a graphical model framework. The position of the facial features are tracked through video streams by incorporating statistical relations in time and the spatial relations between feature points. In many application areas, including those mentioned above, tracking is a key intermediate step that has a significant effect on the overall system performance. For this reason, a good practical tracking algorithm should take into account real-world phenomena such as arbitrary head movements and occlusions. Many existing algorithms track each feature point independently, and do not properly handle occlusions. This causes drifts in the case of arbitrary head movements and occlusions. By exploiting the spatial relationships between feature points, the proposed method provides robustness in a number of scenarios, including e.g. various head movements. To prevent drifts because of occlusions, a Gabor feature based occlusion detector is developed and used in the proposed method. The performance of the proposed tracker has been evaluated on real video data under various conditions. These conditions include occluded facial gestures, low video resolution, illumination changes in the scene, in-plane head motion, and out-of-plane head motion. The proposed method has also been tested on videos recorded in a vehicle environment, in order to evaluate its performance in a practical setting. Given these results it can be concluded that the proposed method provides a general promising framework for facial feature tracking. It is a robust tracker for facial expression sequences in which there are occlusions and arbitrary head movements. The results in the vehicle environment suggest that the proposed method has the potential to be useful for tasks such as driver behavior analysis or driver fatigue detection
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