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Coupling-and-decoupling: A hierarchical model for occlusion-free object detection

机译:耦合和解耦:用于无遮挡物体检测的层次模型

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摘要

Handling occlusion is a very challenging problem in object detection. This paper presents a method of learning a hierarchical model for X-to-X occlusion-free object detection (e.g., car-to-car and person-to- person occlusions in our experiments). The proposed method is motivated by an intuitive coupling-and- decoupling strategy. In the learning stage, the pair of occluding X's (e.g., car pairs or person pairs) is represented directly and jointly by a hierarchical And-Or directed acyclic graph (AOG) which accounts for the statistically significant co-occurrence (i.e., coupling). The structure and the parameters of the AOG are learned using the latent structural SVM (LSSVM) framework. In detection, a dynamic programming (DP) algorithm is utilized to find the best parse trees for all sliding windows with detection scores being greater than the learned threshold. Then, the two single X's are decoupled from the declared detections of X-to-X occluding pairs together with some non-maximum suppression (NMS) post-processing. In experiments, our method is tested on both a roadside-car dataset collected by ourselves (which will be released with this paper) and two public person datasets, the MPII-2Person dataset and the TUD- Crossing dataset. Our method is compared with state-of-the-art deformable part-based methods, and obtains comparable or better detection performance.
机译:处理遮挡是物体检测中非常具有挑战性的问题。本文提出了一种学习用于X到X的无遮挡物体检测的分层模型的方法(例如,我们的实验中的汽车对汽车和人对人的遮挡)。所提出的方法是由直观的耦合和解耦策略驱动的。在学习阶段,一对闭塞的X(例如,汽车对或人对)直接和共同地由分层的And-Or有向无环图(AOG)表示,这在统计上是重要的同时出现(即,耦合) 。 AOG的结构和参数是使用潜在结构SVM(LSSVM)框架学习的。在检测中,动态编程(DP)算法用于为所有滑动窗口找到最佳分析树,并且检测分数大于学习的阈值。然后,将两个单个X与声明的X对X闭塞对的检测解耦,并进行一些非最大抑制(NMS)后处理。在实验中,我们对自己收集的路边汽车数据集(将在本文中发布)和两个公众数据集MPII-2Person数据集和TUD-Crossing数据集进行了测试。我们的方法与最新的基于可变形零件的方法进行了比较,并获得了可比或更好的检测性能。

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