具有视觉感知和模糊决策的智能汽车避碰系统研究

Tsung-Ying Sun, Shang-Jeng Tsai, Jiun-Yuan Tseng, Yen-Chang Tseng
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引用次数: 17

摘要

提出了一种视觉感知与模糊决策相结合的智能汽车避碰系统方案。在IVCAS系统中,CCD摄像头安装在后面的车辆上,用于捕捉前面车辆的图像和道路信息。采用基于直方图色差模糊c均值(HCDFCM)的视觉感知方法识别车辆前车特征和车道边界。HCDFCM是一种鲁棒、快速的目标边界检测算法。在本文中,我们采用坐标映射关系(CMR)与HCDFCM相结合,提供了相对速度、前车与跟车相对距离、跟车绝对速度等必要信息的鲁棒视觉感知。避碰策略基于视觉感知,采用模糊决策机制实现避碰策略。本文将必要的信息整合为超过安全距离度(DESD)来估计碰撞的可能性。定义了安全系数(SC)来表示安全程度。因此,可以减少基于DESD和SC的模糊规则的数量,从而提高决策效率。本文提出的算法除了具有鲁棒性的图像处理能力外,还能从图像特征识别中获得丰富的信息。模糊决策机制从这些丰富的信息中提取有用的紧凑数据。因此,与其他系统相比,IVCAS的主要优点是使用较少的模糊规则,从而在车辆避碰方面取得了更好的效果。
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The study on intelligent vehicle collision-avoidance system with vision perception and fuzzy decision making
This paper proposes a combination scenario of vision perception and fuzzy decision making for developing an intelligent vehicle collision-avoidance system (IVCAS). In IVCAS, a CCD camera is installed on the following vehicle and used to capture the image of leading vehicles and road information. The features of the leading vehicles and lane boundary are recognized by vision perception method, which derived from our previous work on histogram-based color difference fuzzy c-means (HCDFCM). HCDFCM is a robust and fast algorithm for detecting object boundary. In this paper, we adopted the coordinate mapping relationship (CMR) with HCDFCM to provide a robust vision perception for the necessary information such as relative velocity, relative distance between leading and following vehicle and absolute velocity of following vehicle, etc. The collision-avoidance strategy is based on the vision perception and implemented by a fuzzy decision making mechanism. In this paper, the necessary information is integrated as a degree of exceeding safe-distance (DESD) to estimate the possibility of collision. A safety coefficient (SC) is defined to indicate the degree of safety. Therefore, the number of fuzzy rules that based on DESD and SC could be reduced to improve the efficiency of decision making. In addition to robust image processing, abundant information are derived from recognizing image feature using the proposed algorithm in this paper. The fuzzy decision making mechanism abstract useful compact data extracted from these abundant information. Therefore, the main advantage of IVCAS is using less number of fuzzy rules than other systems, and gets more effectiveness in vehicle collision-avoidance.
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