Region-based Activity Recognition Using Conditional GAN.

Xinyu Li, Yanyi Zhang, Jianyu Zhang, Yueyang Chen, Huangcan Li, Ivan Marsic, Randall S Burd
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引用次数: 22

Abstract

We present a method for activity recognition that first estimates the activity performer's location and uses it with input data for activity recognition. Existing approaches directly take video frames or entire video for feature extraction and recognition, and treat the classifier as a black box. Our method first locates the activities in each input video frame by generating an activity mask using a conditional generative adversarial network (cGAN). The generated mask is appended to color channels of input images and fed into a VGG-LSTM network for activity recognition. To test our system, we produced two datasets with manually created masks, one containing Olympic sports activities and the other containing trauma resuscitation activities. Our system makes activity prediction for each video frame and achieves performance comparable to the state-of-the-art systems while simultaneously outlining the location of the activity. We show how the generated masks facilitate the learning of features that are representative of the activity rather than accidental surrounding information.

Abstract Image

Abstract Image

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使用条件GAN的基于区域的活动识别。
我们提出了一种活动识别方法,该方法首先估计活动执行者的位置,并将其与输入数据一起用于活动识别。现有的方法直接采用视频帧或整个视频进行特征提取和识别,并将分类器视为黑盒。我们的方法首先通过使用条件生成对抗性网络(cGAN)生成活动掩码来定位每个输入视频帧中的活动。生成的掩码被附加到输入图像的颜色通道,并被馈送到VGG-LSTM网络中用于活动识别。为了测试我们的系统,我们制作了两个带有手动创建口罩的数据集,一个包含奥运会体育活动,另一个包含创伤复苏活动。我们的系统对每个视频帧进行活动预测,并实现了与最先进的系统相当的性能,同时概述了活动的位置。我们展示了生成的掩码如何帮助学习代表活动的特征,而不是意外的周围信息。
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