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Integrating Context and Occlusion for Car Detection by Hierarchical And-Or Model

机译:通过分层和或模型对车辆检测的背景和遮挡集成

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This paper presents a method of learning reconfigurable hierarchical And-Or models to integrate context and occlusion for car detection. The And-Or model represents the regularities of car-to-car context and occlusion patterns at three levels: (ⅰ) layouts of spatially-coupled N cars, (ⅱ) single cars with different viewpoint-occlusion configurations, and (ⅲ) a small number of parts. The learning process consists of two stages. We first learn the structure of the And-Or model with three components: (a) mining N-car contextual patterns based on layouts of annotated single car bounding boxes, (b) mining the occlusion configurations based on the overlapping statistics between single cars, and (c) learning visible parts based on car 3D CAD simulation or heuris-tically mining latent car parts. The And-Or model is organized into a directed and acyclic graph which leads to the Dynamic Programming algorithm in inference. In the second stage, we jointly train the model parameters (for appearance, deformation and bias) using Weak-Label Structural SVM. In experiments, we test our model on four car datasets: the KITTI dataset, the street parking dataset, the PASCAL VOC2007 car dataset, and a self-collected parking lot dataset. We compare with state-of-the-art variants of deformable part-based models and other methods. Our model obtains significant improvement consistently on the four datasets.
机译:本文介绍了一种学习可重新配置的分层和或模型的方法,以将上下文和遮挡进行集成以进行汽车检测。和或模型代表了三个水平的汽车到车背景和闭塞模式的规律:(Ⅰ)空间耦合的N辆的布局(Ⅱ)具有不同观点闭塞配置的单辆车,(Ⅲ)a少数零件。学习过程包括两个阶段。我们首先使用三个组件学习和或模型的结构:(a)基于带注释的单辆车边界盒的布局挖掘n-car背景模式,(b)基于单辆汽车之间的重叠统计来挖掘遮挡配置, (c)学习基于汽车3D CAD仿真或海瑞斯采矿潜在汽车零件的可见部件。和或模型被组织成导向和非环形图,这导致了推理的动态编程算法。在第二阶段,我们共同使用弱标签结构SVM共同列车(用于外观,变形和偏置)。在实验中,我们在四辆汽车数据集中测试我们的模型:Kitti DataSet,街道停车位数据集,Pascal VOC2007 Car DataSet和一个自收集的停车场数据集。我们与最先进的基于部分模型和其他方法的最先进的变体进行比较。我们的模型在四个数据集上一致地获得了重大改进。

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