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Learning to Parse Pictures of People

机译:学习解析人们的照片

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Detecting people in images is a key problem for video indexing, browsing and retrieval. The main difficulties are the large appearance variations caused by action, clothing, illumination, viewpoint and scale. Our goal is to find people in static video frames using learned models of both the appearance of body parts (head, limbs, hands), and of the geometry of their assemblies. We build on Forsyth & Fleck's general 'body plan' methodology and Felzenszwalb & Huttenlocher's dynamic programming approach for efficiently assembling candidate parts into 'pictorial structures'. However we replace the rather simple part detectors used in these works with dedicated detectors learned for each body part using Support Vector Machines (SVMs) or Relevance Vector Machines (RVMs). We are not aware of any previous work using SVMs to learn articulated body plans, however they have been used to detect both whole pedestrians and combinations of rigidly positioned subimages (typically, upper body, arms, and legs) in street scenes, under a wide range of illumination, pose and clothing variations. RVMs are SVM-like classifiers that offer a well-founded probabilistic interpretation and improved sparsity for reduced computation. We demonstrate their benefits experimentally in a series of results showing great promise for learning detectors in more general situations.
机译:检测图像中的人是视频索引,浏览和检索的关键问题。主要困难是由行动,衣服,照明,观点和规模引起的大外观变化。我们的目标是使用身体部位(头部,四肢,手)的外观和组装的几何形状,找到静态视频帧中的人。我们建立在Forsyth&Fleck的一般“身体计划”方法和Felzenszwalb&Huttenlocher的动态编程方法,以便将候选部分有效地组装成“图画结构”。然而,我们更换了这些工作中使用的相当简单的部件探测器,使用支持向量机(SVM)或相关矢量机(RVM)学习的专用检测器。我们不了解使用SVM学习阐述的身体计划的任何先前的工作,但他们已被用来检测整个行人和刚性定位的子像(通常,上半身,武器和腿部)在宽阔的地方照明,姿势和衣服变化范围。 RVM是SVM的分类器,可提供良好的概率解释和改善计算的稀疏性。我们在一系列结果中实验展示了他们的益处,显示出在更一般情况下学习探测器的良好希望。

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