对象级的建议

Jianxiang Ma, Anlong Ming, Zilong Huang, Xinggang Wang, Yu Zhou
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引用次数: 15

摘要

边缘和表面是物体的两个基本视觉元素。大多数现有的对象建议方法使用边缘或类边缘线索对候选对象进行排序,而我们认为包含对象3D特征的表面线索应该有效地捕获到建议,这在以前很少被讨论。本文提出了一种对象级建议模型,该模型在考虑表面线索的情况下,构建了一个基于遮挡的对象。具体而言,重点是更好地检测遮挡边缘,以丰富建议的表面线索,即设计以遮挡为主的融合和归一化准则,以获得近似整体的轮廓信息,最大限度地增强遮挡边缘图,从而增强建议。PASCAL VOC 2007和MS COCO 2014数据集上的实验结果证明了我们方法的有效性,在1000个提议时,平均召回率比边缘盒提高了6%左右,并且在目标检测性能上也有了适度的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-Level Proposals
Edge and surface are two fundamental visual elements of an object. The majority of existing object proposal approaches utilize edge or edge-like cues to rank candidates, while we consider that the surface cue containing the 3D characteristic of objects should be captured effectively for proposals, which has been rarely discussed before. In this paper, an object-level proposal model is presented, which constructs an occlusion-based objectness taking the surface cue into account. Specifically, the better detection of occlusion edges is focused on to enrich the surface cue into proposals, namely, the occlusion-dominated fusion and normalization criterion are designed to obtain the approximately overall contour information, to enhance the occlusion edge map at utmost and thus boost proposals. Experimental results on the PASCAL VOC 2007 and MS COCO 2014 dataset demonstrate the effectiveness of our approach, which achieves around 6% improvement on the average recall than Edge Boxes at 1000 proposals and also leads to a modest gain on the performance of object detection.
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