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S3D-CNN: skeleton-based 3D consecutive-low-pooling neural network for fall detection

机译:S3D-CNN:基于骨架的3D连续低汇集神经网络,用于崩溃检测

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摘要

Most existing deep-learning-based fall detection methods use either 2D neural network without considering movement representation sequences, or whole sequences instead of only those in the fall period. These characteristics result in inaccurate extraction of human action features and failure to detect falls due to background interferences or activity representation beyond the fall period. To alleviate these problems, a skeleton-based 3D consecutive-low-pooling neural network (S3D-CNN) for fall detection is proposed in this paper. In the S3D-CNN, an activity feature clustering selector is designed to extract the skeleton representation in depth videos using pose estimation algorithm and form optimized skeleton sequence of fall period. A 3D consecutive-low-pooling (3D-CLP) neural network is proposed to process these representation sequences by improving network in terms of layer number, pooling kernel size, and single input frame number. The proposed method is evaluated on public and self-collected datasets respectively, outperforming the existing methods.
机译:大多数现有的基于深度学习的秋季检测方法使用2D神经网络,而不考虑移动表示序列,或整个序列,而不是仅在秋季期间的序列。这些特征导致人类行动特征的不准确提取,并且由于在秋季期间的背景干扰或活动代表而无法检测到下降。为了缓解这些问题,本文提出了一种基于骨架的3D连续低汇集神经网络(S3D-CNN)。在S3D-CNN中,旨在使用姿势估计算法提取深度视频中的骨架表示并形成秋季周期的优化骨架序列。建议通过在层数,汇集内核大小和单个输入帧号方面改进网络来处理这些表示序列的3D连续低池(3D -CLP)神经网络。所提出的方法分别在公共和自收集数据集上进行评估,优于现有方法。

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