A Vehicle Braking System based on 3D Camera

S. Prasetya, Hasvienda M. Ridlwan, Idrus Assagaf, Muslimin, M. Adhitya, D. Sumarsono
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引用次数: 1

Abstract

: One of important feature in a vehicle is the braking system. It is made for a safety device during driving this also included for operation of a heavy vehicle namely a forklift. However, forklift accident has a higher annually. The human factor is considered the main cause of the accident due to the unconsciousness condition while driving. This investigation emphases on applying an intelligent device that can classify objects as well as measure distances in front of an object to decide the braking action. The method of this study process pictures derived from a stereo camera that employed a neural network algorithm. A mini-computer is implanted with the algorithm can classify the objects in front of vehicles. Later on, the two sets of camera position that capture images that can be used to calculate the distance of objects from the camera. Furthermore, process of decelerating signal depends on the distance. The categorization and the distance measurement needs around 300 ms. Moreover, braking action is decided upon the intensity. The higher value means hard stopping meanwhile lower value represents the slow stopping.
基于3D相机的车辆制动系统
当前位置车辆的一个重要特征是制动系统。它是为驾驶期间的安全装置而制造的,也包括用于重型车辆即叉车的操作。然而,叉车事故逐年上升。人为因素被认为是造成交通事故的主要原因。本研究的重点是应用一种智能装置,该装置可以对物体进行分类,并测量物体前方的距离来决定制动动作。本研究采用神经网络算法对立体相机拍摄的图像进行处理。在微型计算机中植入该算法,可以对车辆前方的物体进行分类。随后,捕捉图像的两组相机位置可用于计算物体与相机的距离。此外,减速信号的过程取决于距离。分类和距离测量需要300毫秒左右。此外,制动作用取决于强度。数值越高表示硬停车,数值越低表示慢停车。
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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