基于Monovision的自动导航和目标检测

S. Charan, M. Manjunath, S. Niranjana, Kumar G. J. Kranthi, Prasad V. Nutan
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引用次数: 0

摘要

提出了一种新的计算机视觉自动导航和目标检测技术。在无法直接获得深度信息的情况下,使用单个静止相机(单视觉)进行自动导航是一项具有挑战性的任务。标记路径而不是对象是这里使用的技术。这是基于人类的感知。提出的“下一路径方法”(NPM)使用交叉相关的路径模式匹配,从而产生无障碍遍历路径。采用提出的“稀疏分割”方法进行目标检测。大多数对象是由相似值的像素组成的。基于相似模式的图像分割产生大量的微小图像。这些组合在一起形成一个物体。提出的算法在硬件上实现,并在各种混乱的环境中进行了测试。我们在所有的实时实验中都获得了满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monovision based automated navigation and object detection
Paper proposes a new computer vision technique for automatic navigation and object detection. Automated navigation using a single still camera (mono-vision) where depth information is not available directly is a challenging task. Marking path instead of objects is the technique used here. This is based on human perception. Proposed `Next Path Method' (NPM) uses pattern matching of the paths using cross-correlation which yields obstacle free traversal path. Object detection is performed by using proposed `sparse division'. Most of the objects are composed of pixels of similar values. Division of images based on similar pattern creates large number of tiny images. These are combined to form an object. The proposed algorithms were implemented on the hardware and were tested in varied and cluttered environments. We obtained satisfactory results in all the real-time experiments conducted.
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