Action4D:在人群和杂乱的在线动作识别

Quanzeng You, Hao Jiang
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引用次数: 10

摘要

在拥挤和混乱的环境中识别每个人的行为是计算机视觉中的一项具有挑战性的任务。我们建议使用一个混乱的场景的整体4D“扫描”来解决这个具有挑战性的问题,包括关于人和环境的每一个细节。这就产生了一个新问题,即在杂乱的4D表示中识别多个人的行为。首先,我们提出了一种新的四维跟踪方法,可以实时可靠地检测和跟踪每个人。然后,我们构建了一个新的深度神经网络Action4DNet来识别每个被跟踪人的动作。这样的模型在现实环境中给出了可靠和准确的结果。我们还设计了一个自适应三维卷积层和一个新的判别时态特征学习目标,以进一步提高模型的性能。该方法不受摄像机视角的影响,具有抗杂波性和处理人群的能力。实验结果表明,该方法快速、可靠、准确。我们的方法为实际应用中的动作识别铺平了道路,并准备好部署到智能家居,智能工厂和智能商店中。
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Action4D: Online Action Recognition in the Crowd and Clutter
Recognizing every person's action in a crowded and cluttered environment is a challenging task in computer vision. We propose to tackle this challenging problem using a holistic 4D ``scan'' of a cluttered scene to include every detail about the people and environment. This leads to a new problem, i.e., recognizing multiple people's actions in the cluttered 4D representation. At the first step, we propose a new method to track people in 4D, which can reliably detect and follow each person in real time. Then, we build a new deep neural network, the Action4DNet, to recognize the action of each tracked person. Such a model gives reliable and accurate results in the real-world settings. We also design an adaptive 3D convolution layer and a novel discriminative temporal feature learning objective to further improve the performance of our model. Our method is invariant to camera view angles, resistant to clutter and able to handle crowd. The experimental results show that the proposed method is fast, reliable and accurate. Our method paves the way to action recognition in the real-world applications and is ready to be deployed to enable smart homes, smart factories and smart stores.
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