Human centric object detection in highly crowded scenes

Genquan Duan, H. Ai, Takayoshi Yamashita, S. Lao
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Abstract

In this paper, we propose to detect human centric objects, including face, head shoulder, upper body, left body, right body and whole body, which can provide essential information to locate humans in highly crowed scenes. In the literature, the approaches to detect multi-class objects are either taking each class independently to learn and apply its classifier successively or taking all classes as a whole to learn individual classifier based on sharing features and to detect by step-by-step dividing. Different from these works, we consider two issues, one is the similarities and discriminations of different classes and the other is the semantic relations among them. Our main idea is to predict class labels quickly using a Salient Patch Model (SPM) first, and then do detection accurately using detectors of predicted classes in which a Semantic Relation Model (SRM) is proposed to capture relations among classes for efficient inferences. SPM and SRM are designed for these two issues respectively. Experiments on challenging real-world datasets demonstrate that our proposed approach can achieve significant performance improvements.
高度拥挤场景中以人为中心的目标检测
本文提出对以人为中心的物体进行检测,包括人脸、头肩、上半身、左身体、右身体和全身,可以为在高度拥挤的场景中定位人类提供必要的信息。在文献中,多类物体检测的方法是:将每一类单独学习并依次应用其分类器,或将所有类作为一个整体,根据共享特征学习单个分类器,分步进行检测。与这些作品不同的是,我们考虑了两个问题,一个是不同类别之间的相似和区别,另一个是它们之间的语义关系。我们的主要思想是首先使用显著补丁模型(SPM)快速预测类标签,然后使用预测类的检测器进行准确检测,其中提出了语义关系模型(SRM)来捕获类之间的关系以进行有效推断。SPM和SRM分别针对这两个问题设计。在具有挑战性的真实数据集上的实验表明,我们提出的方法可以实现显着的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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