支持向量机用于克服楼梯检测中的消失点问题

Md. Khaliluzzaman, K. Deb
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引用次数: 0

摘要

从楼梯图像中检测楼梯区域是一项具有挑战性的工作,它支持自主系统和视障人士安全导航。本文提出了一个研究楼梯候选区域验证过程中消失点问题的框架。为此,首先利用楼梯独特的自然和几何特征来检测楼梯候选区域。一个独特的自然特征是三点相连(3CP)。该3CP形成于每个台阶台阶水平边缘端点与台阶台阶宽度和高度边缘交点处。楼梯的另一个几何特征是台阶的边缘是有序排列的。利用这些几何特征从楼梯图像中检测楼梯候选区域。其中,利用楼梯的3CP几何特征对楼梯台阶的水平边缘段进行验证。然后,通过计算消失点(VP)对验证后的楼梯边缘进行验证。这种论证确保边缘段以递增的平行顺序到达。最后,利用VP的y坐标值从其他类似物体中验证楼梯的边缘段,保证楼梯区域的检测。然而,在某些情况下,消失点并不能将楼梯区域与其他楼梯区域(如斑马线或铁路线)区分开来。本文对这一问题进行了研究,利用支持向量机分类器对楼梯候选区域进行了验证,并使用Gabor滤波器提取特征。利用各种楼梯图像来评估所提出的框架,并展示结果证明其充分性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support vector machine for overcoming the problem of vanishing point during stairways detection
Stairways region detection from a stairways image is a challenging activity to support autonomous system and visually impaired people for navigating safely. This paper proposes a framework for investigating the problem of vanishing point during stairways candidate region verification. For that, initially stairways candidate region is detected utilizing the unique natural and geometrical features of stairways. One unique natural feature is three connected point (3CP). This 3CP is formed at every stairways step's horizontal edges end points with stairways step's width and height edge's intersection point. Another geometrical feature is stairways step's edges are exhibited in sorted order. These geometrical features are used to detect stairways candidate region from stairways images. Where, the 3CP geometrical feature of stairways is used to validate the stairways step's horizontal edge segments. After that, the validated stairways edges are justified by computing vanishing point (VP). This justification ensures that the edge segments are arrived in increasing parallel order. Finally, the y coordinate value of VP is utilized to verify the edge segments of stairways from other analogous looking objects and ensure the detection of stairways region. However, in some cases the vanishing point does not distinguish the stairways region from other stairways like objects such as zebra-crossing or rail-line. This paper investigates this problem and verified the stairways candidate region using the SVM classifier where Gabor filters are used to extract the features. Various stair images are utilized to evaluate the proposed framework and presented outcomes demonstrate the adequacy.
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