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Hybrid Neural Networks Based Approach for Holoscopic Micro-Gesture Recognition in Images and Videos

机译:基于混合神经网络的图像和视频的全神经微观识别方法

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This paper presents an approach for hand based micro-gesture recognition in images and videos as part of the Holoscopic Micro-Gesture Recognition (HoMGR) challenge. The database consists of Holoscopic 3D Micro-Gesture images and videos. The proposed framework is an ensemble of convolutional neural network and deep neural network. The framework performs feature fusion technique on both handcrafted (local phase quantization) and deep features extracted from the neural network, to leverage on complimentary information. The powerful discriminative nature of the fused features has proved beneficial on the given HoMGR challenge data. The experiments show that the proposed approach is effective and outperforms the baseline on the Test set by an absolute margin of 26.67% for images and 2.47% for videos, respectively.
机译:本文提出了一种在图像和视频中的手动微观手势识别的方法,作为全神经微观手势识别(HOMGR)挑战的一部分。数据库由全镜3D微手势图像和视频组成。拟议的框架是卷积神经网络和深神经网络的集合。该框架对从神经网络中提取的手工制作(本地相位量化)和深度功能进行了特征融合技术,以利用互补信息。融合特征的强大辨别性质已经证明有益于给定的HOMGR挑战数据。实验表明,所提出的方法是有效的,并且在测试中的绝对边缘和2.47 %的绝对边缘分别是有效和优于视频的基线。

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