快速对象分割从一个移动的相机

F. Arnell, L. Petersson
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引用次数: 15

摘要

场景分割是计算机视觉中寻找感兴趣区域的基本组成部分。大多数渴望实时运行的系统都使用一个考虑整个图像的快速分割阶段,然后是一个更昂贵的分类阶段。本文提出了一种从运动相机拍摄的图像中分割运动物体的新方法。该分割算法基于光流的一种特殊表示,并在其上应用了u-视差。u-视差是通过二次函数近似来间接发现和掩盖图像中的背景流。通过对比内容滤波实现了光流计算的鲁棒性。该算法成功地将移动的行人从移动的车辆中分割出来,并且假阳性片段较少。大多数假阳性片段是由于极点和有机结构,如树木。然而,这种假阳性在分类阶段很容易被拒绝。所提出的分割算法旨在作为检测/分类框架中的一个组件使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast object segmentation from a moving camera
Segmentation of the scene is a fundamental component in computer vision to find regions of interest. Most systems that aspire to run in real-time use a fast segmentation stage that considers the whole image, and then a more costly stage for classification. In this paper we present a novel approach to segment moving objects from images taken with a moving camera. The segmentation algorithm is based on a special representation of optical flow, on which u-disparity is applied. The u-disparity is used to indirectly find and mask out the background flow in the image, by approximating it with a quadratic function. Robustness in the optical flow calculation is achieved by contrast content filtering. The algorithm successfully segments moving pedestrians from a moving vehicle with few false positive segments. Most false positive segments are due to poles and organic structures, such as trees. Such false positives are, however, easily rejected in a classification stage. The presented segmentation algorithm is intended to be used as a component in a detection/classification framework.
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