An Algorithm for Obstacle Detection based on YOLO and Light Filed Camera

Rumin Zhang, Yifeng Yang, Wenyi Wang, Liaoyuan Zeng, Jianwen Chen, S. McGrath
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引用次数: 24

Abstract

This paper presents a novel obstacle detection algorithm in the indoor environment. The algorithm combines the YOLO object detection algorithm and the light field camera which is more simple than normal RGB-D sensor and acquires depth image and high-resolution images at the same in one exposure. The RGB Image rendered by the light filed camera is taken as an input of the YOLO model which was trained base on nearly 100 categories of common objects. According to the object information and the depth map, the obstacle was accurately calculated including its size and position. Experimental results demonstrate that the proposed method can provide higher detection accuracy under indoor environment.
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基于YOLO和光场相机的障碍物检测算法
提出了一种新的室内环境障碍物检测算法。该算法将YOLO目标检测算法与比普通RGB-D传感器更简单的光场相机相结合,一次曝光即可同时获取深度图像和高分辨率图像。以光场相机绘制的RGB图像作为YOLO模型的输入,该模型基于近100类常见物体进行训练。根据目标信息和深度图,精确计算障碍物的大小和位置。实验结果表明,该方法在室内环境下具有较高的检测精度。
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