Human action analysis: novel methods and perspectives.(MS)

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dc.contributor.advisor Dr. Arnav Bhavsar
dc.contributor.author Gupta, Kartik
dc.date.accessioned 2020-12-16T06:12:37Z
dc.date.available 2020-12-16T06:12:37Z
dc.date.issued 2017-03-31
dc.identifier.uri http://hdl.handle.net/123456789/362
dc.description A dissertation submitted for the award of the degree of Master of Science under the guidance of Dr. Arnav Bhavsar (SCEE) en_US
dc.description.abstract Automated human action analysis has important applications in various domains such as automated driving systems, video retrieval, video surveillance (for security purposes), elderly care, and human-robot interactions. However, various problems in this area are quite challenging and are yet unsolved. Traditional problem of human action recognition involves the classification of videos to action class labels. This requires a robust video representation technique and good classifier for modeling of feature representations and to account for variations. In real time applications, one has to deal with continuous action videos where multiple actions are performed. In some cases (e.g. human object interactions), one also needs to consider local levels of actions involving aspects of individual body parts and objects. In this thesis, we propose some approaches and provide some interesting experimental analysis to address some important problems related to human action analysis. First, we propose to use skeleton information with Eigen-joint frame representation and apply a dynamic frame warping (DFW) framework and a Bag-of-words (BOW) framework for action recognition. Our approach can deal with the variations in action duration. We demonstrate that our method is better able to deal with the intra-class variations and as a result, performs better than some contemporary methods. Our approach also work with lesser number of training examples better than hidden markov models (HMMs) and conditional random fields (CRFs). In the second part of the thesis, we consider a more challenging aspect of human action localization which is important for continuous action recognition. In this problem, a particular action is to be recognized in a test sequence of multiple actions, with unknown order. We do not assume any knowledge about the starting and ending frames of each action. We propose a greedy alignment algorithm which works in real-time, and is extended upon the Dynamic frame warping framework. A notion of class templates in the DFW framework helps in achieving the intra-class variations and the greedy alignment algorithm allows us to work with framework in real time unlike dynamic programming based dynamic frame warping framework. In the third part of the thesis, we focus on the task of fine-grained manipulation action classification where hand-object interactions are involved. In this work, we use grasp attributes and motion-constraints information available with Yale Human Grasping dataset. We propose to use the grasp and motion-constraints information to classify 455 object manipulation actions present in this dataset. We show differential comparisons for the performance of different classifiers on grasp information. We also compare object manipulation action recognition accuracies using coarse-grained and ne-grained grasp information.
dc.publisher IITMandi en_US
dc.subject Fine-Grained en_US
dc.title Human action analysis: novel methods and perspectives.(MS) en_US
dc.type Thesis en_US


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