视觉引导深度学习跌倒检测方案

N. Lu, Xiaodong Ren, Jinbo Song, Yidan Wu
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引用次数: 12

摘要

跌倒检测是公共卫生领域的一个重要问题,它对于向因跌倒受伤的老年人提供即时医疗服务尤为重要。基于环境摄像头的跌倒检测是一种公认的非侵入性和公众可接受的方法,其中视频数据用于区分跌倒事件和日常活动。基于视频的跌倒检测通常需要大量的数据集来提取特征并训练分类器。然而,很难收集到自由生活环境下的跌倒数据,而是收集了年轻人的模拟跌倒来构建训练数据集,该数据集是受控的故意行为,并且限于有限的样本数量。此外,现有的基于视频的跌倒检测方法需要先对目标进行分割,容易受到图像噪声、光照变化和遮挡的影响。为了解决这些问题,提出了一种基于三维卷积神经网络(3D CNN)的跌倒检测方法,该方法仅使用运动数据来训练自动特征提取器。除了二维图像的空间特征外,视频中的运动信息还可以通过帧上的三维卷积进行编码。然后结合基于LSTM的空间视觉注意方案,使网络能够集中在关键区域。使用没有摔倒样例的体育数据集Sports- 1m来训练3D CNN,在小型的多相机摔倒数据集上训练视觉注意模型。然后利用基于视觉注意的三维CNN从含有跌倒事件的视频中提取特征,实现跌倒检测;实验结果表明,该方法在秋季数据集上具有优异的检测性能,检测准确率高达100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual guided deep learning scheme for fall detection
Fall detection is an important problem in the field of public health care, which is especially crucial for instant medical service delivery to the injured elderly due to falls. Ambient camera based fall detection has been a recognized non-intrusive and publicly acceptable method, where video data is employed to discriminate fall event from daily activities. Fall detection with videos usually requires a large dataset to extract features and train the classifier. However, it is hard to collect free-living environment fall data and instead simulated falls by young people have been collected to construct the training dataset, which is controlled intentional behavior and restricted to limited quantity of samples. In addition, the existing video based fall detection methods need segment the subject first, which is inclined to be influenced by image noise, illumination variation and occlusion. To address these problems, a three dimensional convolutional neural network (3D CNN) based method for fall detection is developed which only uses kinetic data to train an automatic feature extractor. Besides the spatial feature in 2D image, the motion information from the video could also be encoded by the three dimensional convolutions over the frames. A LSTM based spatial visual attention scheme is then incorporated, which could enable the network to focus on the key regions. Sports dataset Sports-1M with no fall examples is employed to train the 3D CNN and the visual attention model is trained on the small Multiple Cameras Fall Dataset. Then the visual attention based 3D CNN is employed to extract the features from the videos with fall event and implement fall detection. Experiments have shown the superior performance of the proposed scheme on fall dataset with high detection accuracy of 100%.
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