Efficient DPM-Based Object Detection Using Shift with Importance Sampling

B. Wong, J. Hsieh, Chia-Jen Hsiao, S. Chien, Feng-Chia Chang
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引用次数: 1

Abstract

This paper proposes a novel Shift with Importance Sampling (SIS) scheme to improve the efficiency in DPM-based object detection but maintain its high accuracy. For fast and efficient object detection, the cascade-boosting structure is the commonly-used approach in the literature. However, its detection performance is quite lower due to non-robust features and a fully-scanning on image especially when deformable part models are adopted. Another powerful method "deformable part model" is commonly adopted to deal with the above problem. However, its full combinations of parts to represent an object make its inefficiency in the scanning process which needs to check all possible object positions. The proposed SIS scheme can avoid many redundant positions and thus significantly improve the efficiency of the DPM scheme up to a time order. Firstly, various interest points are first detected and then clustered via the ISO-data clustering scheme to produce potential candidates. Since each candidate will not exactly locate in the center of the detected target, it will be shifted according to the weights of its eight neighborhoods. The importance of each neighbor is scored by the DPM-classifier. Once it is shifted, the size of search window to find its positions will be narrowed to only quarter. Thus, the proposed SIS scanning scheme can quickly find the correct location of each pedestrian with minimum tries and tests. After analysis, the time complexity of scanning is reduced from O(n2) to O(logn), where the frame dimension is n×n. After that, the particle filter is adopted to track targets if they are missed. Experimental results show the superiority of our SIS method in pedestrian detection (evaluated on different famous datasets).
基于dpm的重要采样偏移目标检测
为了提高基于dpm的目标检测的效率,同时保持其较高的准确性,提出了一种新的重要抽样偏移(SIS)方案。为了快速有效地检测目标,级联增强结构是文献中常用的方法。然而,由于该方法具有非鲁棒性和对图像的全扫描等特点,特别是在采用可变形零件模型时,其检测性能较低。通常采用另一种强大的方法“可变形零件模型”来处理上述问题。然而,它的全组合部分来表示一个对象,使其在扫描过程中效率低下,需要检查所有可能的对象位置。所提出的SIS方案可以避免许多冗余位置,从而大大提高了DPM方案的效率,直至一个时间顺序。首先,检测各种兴趣点,然后通过iso数据聚类方案聚类产生潜在候选点;由于每个候选目标不会精确地定位在被检测目标的中心,因此它将根据其八个邻域的权重进行移动。每个邻居的重要性由dpm分类器评分。一旦移动,查找其位置的搜索窗口的大小将缩小到只有四分之一。因此,所提出的SIS扫描方案能够以最少的尝试和测试快速找到每个行人的正确位置。经过分析,将扫描的时间复杂度从O(n2)降低到O(logn),其中帧维为n×n。然后,采用粒子滤波对未命中的目标进行跟踪。实验结果表明了我们的SIS方法在行人检测方面的优越性(在不同的著名数据集上进行了评估)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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