Object Detection and Navigation Strategy for Obstacle Avoidance Applied to Autonomous Wheel Chair Driving

Nusrat Farheen, G. G. Jaman, M. Schoen
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引用次数: 3

Abstract

The primary aim of this study is to develop machine learning or deep-learning aided procedures that enhances the capability of a commercial non-autonomous wheelchair towards autonomy. The paper addresses the computer vision work for obstacle detection applied to an autonomous wheelchair operation. The computer vision tasks including the depth image classification are accommodated in a small form factored and resource constraint computers such as Raspberry Pie and Google Coral. The tasks and strategies also include classifying the images using a pretrained model (TensorFlow lite), detecting and measure the degree of obstacle avoidance by pairing RGB image classification with depth images. The objective has been further extended to develop a simulation platform for autonomous wheelchair driving where navigation and path mapping construction algorithm evaluations are visually offered using MATLAB®.
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自动驾驶轮椅避障目标检测与导航策略
本研究的主要目的是开发机器学习或深度学习辅助程序,以增强商用非自主轮椅的自主能力。本文讨论了计算机视觉在自动轮椅操作中障碍物检测的应用。包括深度图像分类在内的计算机视觉任务被容纳在一个小的形状因素和资源限制的计算机中,如Raspberry Pie和Google Coral。任务和策略还包括使用预训练模型(TensorFlow lite)对图像进行分类,通过将RGB图像分类与深度图像配对来检测和测量避障程度。目标已进一步扩展到开发一个自动轮椅驾驶的仿真平台,其中导航和路径映射构建算法评估使用MATLAB®可视化提供。
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