利用深度学习和运动一致性改进人体部位检测

M. Ramanathan, W. Yau, E. Teoh
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引用次数: 5

摘要

视频中人体部位的分割和检测对于动作识别和视频搜索等许多计算机视觉任务都是非常有用的分析方法。传统的检测方法主要集中在人体直立姿势下的身体部位检测。最近,提出了一种包含非直立姿势的身体部位检测框架。该方法包括两个部分,初始分割和计算每个部分的身体部位似然评分。在本文中,我们提出了对这种方法的改进。首先,我们提出了一种新的基于运动的身体部位分割方法,利用运动学特征来识别视频中运动相似的部分。其次,我们用深度学习取代了原版作品中的极限学习机分类器,考察其性能。为了实现准确的检测,深度学习需要大量的训练数据,并且目前只在高分辨率图像中使用。在这里,我们将深度学习应用于低分辨率情况下的身体部位检测。我们进行实验来研究和分析所提出的改进措施的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving human body part detection using deep learning and motion consistency
Body part segmentation and detection in videos is a useful analysis for many computer vision tasks such as action recognition and video search. Conventional methods mainly focus on body part detection assuming upright posture of the human body. Recently, a body part detection framework was proposed to include non-upright postures. This method consists of 2 parts, initial segmentation and computation of body part likelihood score for each segment. In this paper, we propose improvements to this approach. Firstly, we propose a novel motion based body part segmentation using kinematic features to identify segments which undergo similar motion in the video based on a consistency or error measure. Secondly, we replace the Extreme Learning Machine classifier in the original work with deep learning to investigate it's performance. For accurate detection, deep learning requires a lot of training data and it has so far been used only in high resolution images. Here we apply deep learning for body part detection in low resolution cases. We conduct experiments to study and analyse the effect of the improvements proposed.
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