提高驾驶员视觉感知的DMD灯设计与实验研究

Shuo Zhang, Jianwei Huang, Ping Su, Jianshe Ma
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引用次数: 0

摘要

驾驶的核心是视野。驾驶员需要获取基于视觉感知的信息来进行决策。以往对智能前照灯的研究主要集中在几个具体问题上,如防眩光功能和投影功能。这些功能间接对驾驶员的视觉感知有一定影响,但没有充分考虑周围环境,容易影响驾驶员对场景中其他要素的感知,产生安全隐患。此外,现有的研究大多集中在光学设计上,缺乏系统层面的设计和测试。本研究创造性地提出了对前方整个场景进行视觉感知优化的概念,使用普通车载单目摄像头捕捉前方场景,使用YOLO深度学习算法识别车辆并获取位置信息。由于消除了眩光干扰,对于场景的其他元素,我们编写了基于人眼最小感知差异理论的算法,以获得优化的光类型,实时提高视觉感知。采用像素结构DMD (Digital Micromirror Device)进行变深度投影,实现对前方场景的实时感知优化。实验结果表明,该系统可以提高所捕获场景的图像质量、自然程度和人眼接受度,提高人眼的视觉感知能力,保证交通安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Experimental Investigation of DMD Lamp to Improve Driver's Visual Perception
The core of driving is vision. Drivers need to obtain information based on vision perception to make decisions. Previous studies on smart headlamps mostly focused on several specific issues, such as the anti-glare function and the projection function. These functions indirectly have a certain effect on the driver's visual perception, but they do not fully consider the surrounding environment, which is easy to affect the driver's perception of other elements in the scene, resulting in potential safety hazards. Besides, most of the existing research focuses on the optical design, there is no design and test at the system level. This research creatively presents the concept of visual perception optimization for the whole scene ahead, uses an ordinary vehicle monocular camera to capture the scene ahead, and uses a YOLO deep learning algorithm to identify vehicles and obtain location information. Since eliminating glare interference, for other elements of the scene, we write an algorithm based on the minimum perceptual difference theory of human eyes to get the optimized light type to improve visual perception in real time. The pixel structure DMD (Digital Micromirror Device) is used for variable depth projection to realize the real-time perception optimization of the front scene. Experimental results show that the system can improve the image quality, natural degree and human eye acceptance of the captured scene, improve the visual perception of human eyes and ensure traffic safety.
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