自主导航立体光学图像的数值处理

P. Svasta, I. Hapenciuc
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引用次数: 2

摘要

长期以来,自主机器人一直是工程师们的梦想。第一步是创造出能够在已知空间内有限距离内移动的机器人。由于需要一个能够在高度不规则和许多未知障碍物上导航的机器人,DARPA组织了这次大挑战。大多数参赛者使用GPS和激光遥测仪进行地形调查。本文描述了一种不同的方式来调查地形地形:立体图像。这是最接近人类视线的地形调查方法。通过从图像中收集尽可能多的信息,机器人将不再需要其他传感器。这是一个显而易见的事实,因为对于人类来说,超过90%的周围环境的信息来自视觉。已经建立了一个捕捉和处理立体图像的设备,并创建了软件,以证明该方法在探测和避开障碍物以及调查未知地区的地形地形方面的准确性。为了从立体光学图像中提取导航所需的信息,需要涉及到复杂的形状识别、模式识别和互相关算法,以及图像的校准和锐化。由于对处理能力的要求将是巨大的,因此将采用减少计算需求的方法来提高处理速度。现场测量将对性能和准确性有一个清晰的认识。为了更好的测量,立体光学系统将得到其他传感器的支持:磁罗盘、陀螺仪、三轴加速度计、压力传感器、GPS和里程表。其中一些是多余的,只是用来确认和提高通过立体光学图像收集的信息的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical processing of stereo optical images for autonomous navigation
Autonomous robots had been for a long time any engineers dream. First steps were done by creating robots able to move in well know space for restricted distances. The need of a robot able to navigate on an area with high irregularities and many unknowns obstacles lead to the organisation of the DARPA Grand Challenge. Most competitors used GPS and Laser Telemeters for terrain investigation. This paper is describing a different way to investigate the terrain topography: stereo images. This is the closest way of terrain investigation to the human sight. By gathering as much information from images the need for other sensors on the robot will be no more. This is an obvious fact since for human more than 90% of information about the surrounding environment is coming from sight. An equipment to capture and process stereo images had been build and the software was created to prove the accuracy of this method to detect and avoid obstacles and to investigate the terrain topography for uncharted areas. To extract the information needed for the navigation from the stereo optic images, complex algorithms of shape recognisance, pattern mach and cross correlation will be involved together with image calibration and sharpening. Because the processing power requirements will be huge methods to decrease the computation need will be used to increase the processing speed On site measurements will give a clear view of the performance and accuracy. For better measurements the stereo optical system will be backed up by other sensors: magnetic compass, gyroscopes, tri-axial accelerometers, pressure sensors, GPS and odometer. Some of these are redundant and are used just to confirm and improve the accuracy of the information gathered thru the stereo optical images.
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