Author:
Uddin Md. Zasim,Muramatsu Daigo,Takemura Noriko,Ahad Md. Atiqur Rahman,Yagi Yasushi
Abstract
Abstract
Gait-based features provide the potential for a subject to be recognized even from a low-resolution image sequence, and they can be captured at a distance without the subject’s cooperation. Person recognition using gait-based features (gait recognition) is a promising real-life application. However, several body parts of the subjects are often occluded because of beams, pillars, cars and trees, or another walking person. Therefore, gait-based features are not applicable to approaches that require an unoccluded gait image sequence. Occlusion handling is a challenging but important issue for gait recognition. In this paper, we propose silhouette sequence reconstruction from an occluded sequence (sVideo) based on a conditional deep generative adversarial network (GAN). From the reconstructed sequence, we estimate the gait cycle and extract the gait features from a one gait cycle image sequence. To regularize the training of the proposed generative network, we use adversarial loss based on triplet hinge loss incorporating Wasserstein GAN (WGAN-hinge). To the best of our knowledge, WGAN-hinge is the first adversarial loss that supervises the generator network during training by incorporating pairwise similarity ranking information. The proposed approach was evaluated on multiple challenging occlusion patterns. The experimental results demonstrate that the proposed approach outperforms the existing state-of-the-art benchmarks.
Funder
Japan Society for the Promotion of Science
Publisher
Springer Science and Business Media LLC
Subject
Computer Vision and Pattern Recognition
Reference48 articles.
1. M Arjovsky, S Chintala, L Bottou, Wasserstein GAN. CoRR (2017). abs/1701.07875, 1701.07875.
2. LJ Ba, R Kiros, GE Hinton, Layer normalization. CoRR (2016). abs/1607.06450.
3. M Bertalmio, G Sapiro, V Caselles, C Ballester, in Proc. of the 27th Annual Conf. on Computer Graphics and Interactive Techniques. SIGGRAPH ’00. Image inpainting (ACM Press/Addison-Wesley Publishing Co.New York, 2000), pp. 417–424.
4. H Cai, C Bai, Y Tai, C Tang, in Computer Vision - ECCV 2018 - 15th European Conference, Munich, Germany, September 8-14 2018, Proceedings, Part II. Deep video generation, prediction and completion of human action sequences, (2018), pp. 374–390. https://doi.org/10.1007/978-3-030-01216-8_23.
5. C Chen, J Liang, H Zhao, H Hu, J Tian, Frame difference energy image for gait recognition with incomplete silhouettes. Pattern Recogn Lett. 30(11), 977–984 (2009).
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