Optimal scanning for faster object detection

N. Butko, J. Movellan
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引用次数: 110

Abstract

Recent years have seen the development of fast and accurate algorithms for detecting objects in images. However, as the size of the scene grows, so do the running-times of these algorithms. If a 128×102 pixel image requires 20 ms to process, searching for objects in a 1280×1024 image will take 2 s. This is unsuitable under real-time operating constraints: by the time a frame has been processed, the object may have moved. An analogous problem occurs when controlling robot camera that need to scan scenes in search of target objects. In this paper, we consider a method for improving the run-time of general-purpose object-detection algorithms. Our method is based on a model of visual search in humans, which schedules eye fixations to maximize the long-term information accrued about the location of the target of interest. The approach can be used to drive robot cameras that physically scan scenes or to improve the scanning speed for very large high resolution images. We consider the latter application in this work by simulating a “digital fovea” and sequentially placing it in various regions of an image in a way that maximizes the expected information gain. We evaluate the approach using the OpenCV version of the Viola-Jones face detector. After accounting for all computational overhead introduced by the fixation controller, the approach doubles the speed of the standard Viola-Jones detector at little cost in accuracy.
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最佳扫描更快的目标检测
近年来,快速准确的图像目标检测算法得到了发展。然而,随着场景规模的增长,这些算法的运行时间也在增加。如果处理128×102像素图像需要20ms,那么在1280×1024图像中搜索对象将需要2s。这在实时操作约束下是不合适的:当一个帧被处理时,对象可能已经移动了。在控制需要扫描场景寻找目标物体的机器人摄像机时,也会出现类似的问题。本文提出了一种改进通用目标检测算法运行时间的方法。我们的方法是基于人类视觉搜索模型,该模型安排眼睛的注视,以最大限度地获得有关感兴趣目标位置的长期信息。该方法可用于驱动机器人相机进行物理扫描场景或提高非常大的高分辨率图像的扫描速度。我们通过模拟“数字中央凹”并以最大化预期信息增益的方式将其顺序放置在图像的各个区域来考虑后一种应用。我们使用OpenCV版本的Viola-Jones面部检测器来评估这种方法。在考虑了固定控制器引入的所有计算开销后,该方法的速度是标准维奥拉-琼斯探测器的两倍,而精度的代价很小。
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