BGaitR-Net: Occluded Gait Sequence reconstructionwith temporally constrained model for gait recognition
Somnath Sendhil Kumara, Pratik Chattopadhyaya, Lipo Wang

TL;DR
This paper introduces BGaitR-Net, a deep learning model that reconstructs occluded gait frames by leveraging spatio-temporal information, improving gait recognition robustness under occlusion conditions.
Contribution
The paper presents a novel multi-stage deep learning pipeline with a Bi-Directional LSTM for occlusion detection and reconstruction in gait sequences, enhancing robustness over prior methods.
Findings
Reconstructed occluded frames are temporally consistent with gait cycles.
The model outperforms existing methods in occlusion scenarios.
Synthetic occlusion training improves real-world applicability.
Abstract
Recent advancements in computational resources and Deep Learning methodologies has significantly benefited development of intelligent vision-based surveillance applications. Gait recognition in the presence of occlusion is one of the challenging research topics in this area, and the solutions proposed by researchers to date lack in robustness and also dependent of several unrealistic constraints, which limits their practical applicability. We improve the state-of-the-art by developing novel deep learning-based algorithms to identify the occluded frames in an input sequence and next reconstruct these occluded frames by exploiting the spatio-temporal information present in the gait sequence. The multi-stage pipeline adopted in this work consists of key pose mapping, occlusion detection and reconstruction, and finally gait recognition. While the key pose mapping and occlusion detection…
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Taxonomy
TopicsGait Recognition and Analysis · Human Pose and Action Recognition · Video Surveillance and Tracking Methods
