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Deep Learning Based Stair Detection and Statistical Image Filtering for Autonomous Stair Climbing

机译:基于深度学习的阶梯检测和自主楼梯攀登的统计图像滤波

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Mobile robots are widely used in the surveillance industry, for military and industrial applications. To carry out surveillance tasks like urban search and rescue operation, the ability to traverse stairs is of immense significance. This paper presents a deep learning based approach for stair detection, statistical filtering on images for the estimation of stair alignment, and novel mechanical design for an autonomous stair climbing robot. The primary objective is to solve the problem of indoor locomotion over staircases with the proposed implementation. The detection of stairs in an image is a traditional problem, and the most recent approaches are centered around hand-crafted texture-based Gabor filters. However, with the advent of deep learning methods, we could arrive at more scalable and robust detection schemes. The proposed statistical filtering eliminates the need for manual tuning of parameters of the edge detector and the Hough accumulator. The experimental results of stair detection and stair alignment algorithm are demonstrated in this paper.
机译:移动机器人被广泛应用于监控行业,军事和工业应用。开展城市一样搜索和救援行动的监视任务,穿过楼梯的能力是极其重大的意义。本文提出了楼梯检测,在图像上统计滤波为楼梯对准的估计,和新颖的机械设计用于自主爬楼梯机器人深学习基础的方法。主要目的是在与拟实施的楼梯来解决室内运动的问题。楼梯的图像中检测是一个传统的问题,最近的方法都围绕着手工制作的基于纹理的Gabor滤波器。然而,随着深度学习方法的出现,我们可以在更多的可扩展性和强大的检测方案到达。所提出的统计滤波消除了边缘检测器和霍夫累加器的参数手动调谐的需要。楼梯检测和楼梯比对算法的实验结果证明了被本文。

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