多通道特征拟合三维cnn和lstm进行人体活动识别

Y. Qin, L. Mo, Jing Ye, Z. Du
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引用次数: 2

摘要

人体活动识别在视频监控、虚拟现实等领域有着广泛的应用。研究了一种较新的三维cnn与LSTMs融合模型在人体活动识别中的通用特征组合方法。该组合方法使用的所有特征均来自人类活动视频,无需人工提取特征或任何先验知识,模型具有良好的泛化性能。通过提取运动光流矢量、灰度和体边缘的多通道特征,将其转化为三维卷积神经网络,并在长短期记忆神经网络中处理时间特征,大大提高了模型的识别率。实验选择KTH数据集作为数据源。使用基于RGB的模型与基于多通道特征的模型进行比较。结果表明,多通道特征可以明显提高识别准确率,并且在不同场景下具有很强的鲁棒性,证明了多通道特征组合是一种有效的拟合3D cnn和lstm的特征组合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-channel features fitted 3D CNNs and LSTMs for human activity recognition
Human activity recognition has been widely used in many fields, especially in video surveillance and virtual reality, etc. The paper investigates a general feature combination method for a relatively new 3D CNNs and LSTMs fusion model in human activity recognition. All the features used in this combination method are from human activity videos without manually extracting features or any prior knowledge, and the model has good generalization performance. Through extracting multi-channel features of the motion optical flow vector, grayscale and body edge, putting them to 3D convolutional neural network, and processing time characteristics within Long-Short Term Memory neural network, the recognition rate of the model rises greatly. The experiment selects KTH dataset as the data source. The model based on RGB is used to compare with the model based on multi-channel features. It shows that multi-channel features can improve recognition accuracy rate obviously, and have great robustness in different scenes, which proves that it is an efficient feature combination method fitted 3D CNNs and LSTMs.
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