期刊论文详细信息
Mathematical Problems in Engineering
Conditional Deep 3D-Convolutional Generative Adversarial Nets for RGB-D Generation
Santanu Chaudhury1  Ankit Shukla2  Manoj Sharma2  Richa Sharma3 
[1] Department of Electrical Engineering, IIT Delhi and Director of IIT Jodhpur, New Delhi, India;ECE Department of Bennet University, Greater Noida, India;IIT Delhi, New Delhi, India, iitd.ac.in;
DOI  :  10.1155/2021/8358314
来源: Hindawi Publishing Corporation
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【 摘 要 】

Generation of synthetic data is a challenging task. There are only a few significant works on RGB video generation and no pertinent works on RGB-D data generation. In the present work, we focus our attention on synthesizing RGB-D data which can further be used as dataset for various applications like object tracking, gesture recognition, and action recognition. This paper has put forward a proposal for a novel architecture that uses conditional deep 3D-convolutional generative adversarial networks to synthesize RGB-D data by exploiting 3D spatio-temporal convolutional framework. The proposed architecture can be used to generate virtually unlimited data. In this work, we have presented the architecture to generate RGB-D data conditioned on class labels. In the architecture, two parallel paths were used, one to generate RGB data and the second to synthesize depth map. The output from the two parallel paths is combined to generate RGB-D data. The proposed model is used for video generation at 30 fps (frames per second). The frame referred here is an RGB-D with the spatial resolution of 512 × 512.

【 授权许可】

CC BY   

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