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http://localhost:80/xmlui/handle/123456789/5166
Title: | Recognizing Human Actions in Realistic and Complex Scenarios using Bag of Expression (BoE) Model |
Authors: | Nazir, Saima |
Keywords: | Software Engineering |
Issue Date: | 2019 |
Publisher: | University of Engineering & Technology, Taxila. |
Abstract: | Human action recognition (HAR) has emerged as a core research domain for video understanding and analysis, thus attracting many researchers. Although signi cant results have been achieved in simple scenarios, HAR is still a challenging task due to issues associated with view independence, occlusion and inter-class variation observed in realistic scenarios. In previous research e orts, the classical Bag of Words (BoW) approach, along with its variations, has been widely used. In this dissertation, we propose a novel feature representation approach for action representation in complex and realistic scenarios. We also present an approach to handle the inter and intraclass variation challenge present in human action recognition. The primary focus of this research is to enhance the existing strengths of the BoW approach like view independence, scale invariance and occlusion handling. The proposed Bag of Expressions (BoE) includes an independent pair of neighbors for building expressions; therefore it is tolerant to occlusion and capable of handling view independence up to some extent in realistic scenarios. We apply a class-speci c visual words extraction approach for establishing a relationship between these extracted visual words in both space and time dimensions. To improve classical BoW, we propose a Dynamic Spatio-Temporal Bag of Expressions (D-STBoE) model for human action recognition without compromising the strengths of the classical bag of visual words approach. Expressions are formed based on the density of a spatiotemporal cube of a visual word. To handle inter-class variation, we use class-speci c visual word representation for visual expressions generation. The formation of visual expressions is based on the density of spatiotemporal cube built around each visual word, as constructing neighborhoods with a xed number of neighbors would include non-relevant information hence making a visual expression less discriminative in scenarios with occlusion and changing viewpoints. Thus, the proposed approach makes our model more robust to occlusion and changing viewpoint challenges present in realistic scenarios. Comprehensive experiments on publicly available datasets show that the proposed approach outperforms existing state-of-the-art human action recognition approaches. |
Gov't Doc #: | 18259 |
URI: | http://142.54.178.187:9060/xmlui/handle/123456789/5166 |
Appears in Collections: | Thesis |
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