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Object Detection by Admissible Region Search

机译:可允许区域搜索的对象检测

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Efficient Subwindow Search(ESS) is an effective method for object detection and localization, which adopts a scheme of branch-and-bound to find the global optimum of a quality function from all the possible subimages. Since the number of possible subimagc is 0(n,~4) for an images with n × n resolution, the time complexity of ESS ranges from 0(n~2) to 0(n~4). In other words, ESS is equivalent to the exhaustive search in the worst case. In this paper, we propose a new method named Adimissible Region Search(ARS) for detecting and localizing the object with arbitrary shape in an image. Compared with the sliding window methods using ESS, ARS has two advantages: firstly, the time complexity is quadratic and stable so that it is more suitable to process large resolution images; secondly, the admissible region is adaptable to match the real shape of the target object and thus more suitable to represent the object. The experimental results on PASCAL VOC 2006 demonstrate that the proposed method is much faster than the ESS method on average.
机译:高效的子窗口搜索(ESS)是对象检测和定位的有效方法,它采用分支和常规的方案来找到来自所有可能的子项的质量功能的全局最佳。由于具有n×n分辨率的图像的可能性Subimagc的数量为0(n,〜4),因此ESS的时间复杂度从0(n〜2)到0(n〜4)。换句话说,ESS相当于最坏情况下的详尽搜索。在本文中,我们提出了一种名为Adimissible区域搜索(ARS)的新方法,用于检测和定位图像中的任意形状的对象。与使用ESS的滑动窗法相比,ARS有两个优点:首先,时间复杂性是二次且稳定的,使其更适合处理大的分辨率图像;其次,可允许的区域适用于匹配目标物体的真实形状,从而更适合于代表物体。 Pascal VOC 2006上的实验结果表明,所提出的方法平均比ESS方法快得多。

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