基于共现矩阵和二元分类深度分析的室内楼梯检测,用于支持自主智能轮椅的安全系统

Fitri Utaminingrum , Ahmad Wali Satria Bahari Johan , I. Komang Somawirata , Timothy K. Shih , Chih-Yang Lin
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引用次数: 0

摘要

检测下楼梯和楼层是在智能轮椅中实施自主系统的一个重要方面。如果轮椅上使用的障碍物检测系统不能准确识别下楼梯,就会给用户带来严重后果,包括受伤,最坏的情况是发生致命事故。因此,我们迫切需要一种算法,它不仅能高精度地检测到下楼梯上的障碍物,还能以最小的计算延迟运行,确保轮椅制动时能立即做出反应。在这项研究中,我们利用 GLCM 技术提取纹理特征。在这些方法中,决策树的准确率最高,达到 94%,计算时间仅为 0.01299 秒。与之前的研究相比,精度提高了 2.5%。这样的精确度水平加上快速的计算性能,使智能轮椅能够有效地帮助用户在下楼梯时识别障碍物。
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Indoor staircase detection for supporting security systems in autonomous smart wheelchairs based on deep analysis of the Co-occurrence Matrix and Binary Classification

Detecting descending stairs and floors is a crucial aspect of implementing autonomous systems in smart wheelchairs. When the obstacle detection system used in wheelchairs fails to accurately identify descending stairs, it can lead to severe consequences for users, including injuries or, in the worst-case scenario, fatal accidents. Therefore, there is a pressing need for an algorithm that not only exhibits high accuracy in detecting obstacles on descending stairs but also operates with minimal computational delay to ensure an immediate response in wheelchair braking. In this research, We utilize the GLCM technique to extract texture characteristics. Out of these methods, the Decision Tree exhibits the highest accuracy, reaching 94%, with a remarkably fast computational time of 0.01299 s. These promising results were achieved by utilizing the GLCM method with a distance of 2 and an angle of 45°. The accuracy obtained has increased by 2.5% compared to the previous research. Such a level of accuracy, coupled with fast computational performance, enables smart wheelchairs to effectively assist users in identifying obstacles while descending stairs.

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