FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks
Hand pose estimation from monocular depth images has been an important and challenging problem in the Computer Vision community. In this paper, we present a novel approach to estimate 3D hand joint locations from 2D depth images. Unlike most of the previous methods, our model captures the 3D spatial information from a depth image thereby giving it a greater understanding of the input. We voxelize the input depth map to capture the 3D features of the input and perform 3D data augmentations to make our network robust to real-world images. Our network is trained in an end-to-end manner which reduces time and space complexity significantly when compared to other methods. Through extensive experiments, we show that our model outperforms state-of-the-art methods with respect to the time it takes to train and predict 3D hand joint locations. This makes our method more suitable for real-world hand pose estimation scenarios.
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Rohan Lekhwani (add twitter)
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07/15/19 06:04PM
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arxiv_cscv: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/p5bBMtiL42
arxiv_cshc: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/pH6L85sKuD
arxiv_cscv: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/p5bBMt1acu
arxiv_cshc: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/pH6L85sKuD
arxiv_cscv: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/p5bBMt1acu
arxiv_pop: 2019/07/14 投稿 3位 CV(Computer Vision and Pattern Recognition) FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/Rvj6uQLlyq 11 Tweets 0 Retweets 6 Favorites
arxiv_cshc: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/pH6L85Klmb
arxiv_cscv: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/p5bBMt1acu
arxivml: "FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks", Rohan Lekhw… https://t.co/oe6AUAzaGF
arxiv_cshc: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/pH6L85sKuD
arxiv_cscv: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/p5bBMtiL42
Memoirs: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks. https://t.co/7h9ti5L3L4
arxiv_cs_LG: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks. Rohan Lekhwani https://t.co/NFSBjP8rIN
BrundageBot: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks. Rohan Lekhwani https://t.co/nWUAGyBRmR
arxiv_cshc: FastV2C-HandNet: Fast Voxel to Coordinate Hand Pose Estimation with 3D Convolutional Neural Networks https://t.co/pH6L85sKuD
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