Sparse scene flow segmentation for moving object detection in urban environments

Philip Lenz, Julius Ziegler, Andreas Geiger, Martin Roser
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引用次数: 156

Abstract

Modern driver assistance systems such as collision avoidance or intersection assistance need reliable information on the current environment. Extracting such information from camera-based systems is a complex and challenging task for inner city traffic scenarios. This paper presents an approach for object detection utilizing sparse scene flow. For consecutive stereo images taken from a moving vehicle, corresponding interest points are extracted. Thus, for every interest point, disparity and optical flow values are known and consequently, scene flow can be calculated. Adjacent interest points describing a similar scene flow are considered to belong to one rigid object. The proposed method does not rely on object classes and allows for a robust detection of dynamic objects in traffic scenes. Leading vehicles are continuously detected for several frames. Oncoming objects are detected within five frames after their appearance.
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稀疏场景流分割用于城市环境中运动目标检测
现代驾驶员辅助系统,如避碰或交叉辅助,需要当前环境的可靠信息。从基于摄像头的系统中提取此类信息对于城市内部交通场景来说是一项复杂且具有挑战性的任务。本文提出了一种利用稀疏场景流进行目标检测的方法。对于从移动车辆上拍摄的连续立体图像,提取相应的兴趣点。这样,对于每个兴趣点,视差和光流值都是已知的,从而可以计算场景流。描述相似场景流的相邻兴趣点被认为属于一个刚性对象。该方法不依赖于对象类,可以对交通场景中的动态对象进行鲁棒检测。在数帧内连续检测到领先车辆。迎面而来的物体在其出现后的五帧内被检测到。
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