A High-Performance Moving Object Detection Method Based on Optical Flow

Xiang Zhang, Xianmin Zhang, Kai Li
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Abstract

An adaptive and high precision optical flow estimation approach for moving object detection is proposed. The proposed method (P-M) is composed of a K-means clustering based particle swarm optimization algorithm (PSO-K), an improved multi-scale method and a flow field verification strategy. To test the P-M, a series of experiments are carried out. The experimental result based on the Middlebury training set shows that the P-M estimates the uniform distribution of flow field and the boundary between moving objects is clearly visible. Moreover, the P-M has the highest accuracy with minimal average endpoint error (AEPE) and average angular error (AAE) compared to the Lukas Kanade (LK) method, the classic Horn Schunck (C-HS) method and block-based matching (BL) method. The AEPE and AAE for the P-M are 0.427 and 3.402, respectively. The maximum average relative improvement rates (ARIR) are 43.816% and 70.252 %, respectively. Furthermore, the test result of the micro-vision image sequence demonstrates that the P-M has a high performance, which can accurately detect the moving targets even in the presence of large displacement.
基于光流的高性能运动目标检测方法
提出了一种用于运动目标检测的自适应高精度光流估计方法。该方法由基于k均值聚类的粒子群优化算法(PSO-K)、改进的多尺度方法和流场验证策略组成。为了验证P-M,进行了一系列的实验。基于Middlebury训练集的实验结果表明,P-M估计了流场的均匀分布,运动物体之间的边界清晰可见。此外,与Lukas Kanade (LK)方法、经典Horn Schunck (C-HS)方法和基于块的匹配(BL)方法相比,P-M方法具有最小的平均端点误差(AEPE)和平均角度误差(AAE)的最高精度。P-M的AEPE和AAE分别为0.427和3.402。最大平均相对改善率(ARIR)分别为43.816%和70.252%。此外,微视觉图像序列的测试结果表明,该算法具有较高的性能,即使在存在较大位移的情况下也能准确地检测到运动目标。
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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