高动态场景中运动物体的检测与分割

Aurélie Bugeau, P. Pérez
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引用次数: 97

摘要

在动态场景中检测和分割运动物体是一项困难但又必不可少的任务,在许多应用中,如监视。大多数现有方法只有在背景持续或缓慢变化的情况下,或者对象和背景都是刚性的情况下,才能给出良好的结果。在本文中,我们提出了一种在没有这些约束的情况下直接检测和分割前景运动目标的新方法。首先,提取具有相似运动和光度特征的像素组。对于第一步,仅使用图像像素的子网格来减少计算成本并提高对噪声的鲁棒性。我们介绍了使用p值来验证光流估计和平均移位聚类算法中的自动带宽选择。在第二阶段,在MAP/MRF框架中执行与给定集群相关的对象的分割。我们的方法能够处理移动的相机和背景中的几个不同的运动。对具有挑战性的视频序列进行了实验,证明了该方法的有效性和对复杂场景视频分析的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and segmentation of moving objects in highly dynamic scenes
Detecting and segmenting moving objects in dynamic scenes is a hard but essential task in a number of applications such as surveillance. Most existing methods only give good results in the case of persistent or slowly changing background, or if both the objects and the background are rigid. In this paper, we propose a new method for direct detection and segmentation of foreground moving objects in the absence of such constraints. First, groups of pixels having similar motion and photometric features are extracted. For this first step only a sub-grid of image pixels is used to reduce computational cost and improve robustness to noise. We introduce the use of p-value to validate optical flow estimates and of automatic bandwidth selection in the mean shift clustering algorithm. In a second stage, segmentation of the object associated to a given cluster is performed in a MAP/MRF framework. Our method is able to handle moving camera and several different motions in the background. Experiments on challenging sequences show the performance of the proposed method and its utility for video analysis in complex scenes.
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