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Geometrical Feature Based Stairways Detection and Recognition Using Depth Sensor

机译:深度传感器的基于几何特征的楼梯检测与识别

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Stairways detection and distance measurement have been a continuous challenge of research area in human-system interaction to reach topnotch solution with greater portability in assisting visually impaired people and guiding autonomous navigation system at smart environments in the real world. For that, a framework is proposed in this work to detect the stair region from depth stair image based on a unique geometrical feature of a stair. The unique geometrical feature is every stair step's height gradually decreases from bottom to top of the stair. For that initially, the depth image is preprocessed and extracted the Canny edge image. After that, a proposed edge linking procedure is utilized through the Brute-Force Search technique to improve the broken edges. Furthermore, a non-candidate edge elimination procedure is used to extract the longest potential concurrent horizontal edge segment by considering the orientation of the horizontal edges. Finally, the extracted potential concurrent horizontal edge segment is verified as stair edge segment by justifying the aforementioned unique feature of stair and detects the stair region of interest (ROI). Furthermore, one-dimensional depth feature is extracted from the ROI and sent to the support vector machine (SVM) for recognizing the up, down, and negative stair. The distance of the recognized stair region from the camera is estimated based on the depth feature. Stairs images captured under different lighting conditions have been used to test the proposed framework to evaluate the resultant accuracy of the system.
机译:楼梯检测和距离测量一直是人机交互研究领域的一个持续挑战,以达到具有更高便携性的一流解决方案,以帮助视障人士并在现实世界中的智能环境中引导自主导航系统。为此,在这项工作中提出了一个框架,该框架根据楼梯的独特几何特征从深度楼梯图像中检测楼梯区域。独特的几何特征是每个楼梯台阶的高度从楼梯的底部到顶部逐渐减小。为此,首先对深度图像进行预处理并提取Canny边缘图像。之后,通过蛮力搜索技术利用提出的边缘链接程序来改善断边。此外,通过考虑水平边缘的方向,使用非候选边缘消除过程来提取最长的潜在并行水平边缘段。最后,通过证明上述楼梯的独特特征,将提取的潜在并发水平边缘段验证为楼梯边缘段,并检测感兴趣的楼梯区域(ROI)。此外,从ROI中提取一维深度特征,并将其发送到支持向量机(SVM),以识别上下楼梯和负楼梯。根据深度特征估算识别出的楼梯区域与摄像机的距离。在不同照明条件下捕获的楼梯图像已用于测试建议的框架,以评估系统的最终准确性。

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