基于pso神经网络的足球机器人全向视觉目标检测

N. Setyawan, N. Mardiyah, Khusnul Hidayat, Nurhadi, Zulfatman Has
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引用次数: 9

摘要

足球机器人需要视觉系统来识别机器人周围环境中的物体。全向视觉系统已经得到了广泛的发展,用于寻找场地中的球、门柱、白线等物体,并识别物体与机器人之间的距离和角度。开发全方位视觉系统最具挑战性的问题是球面反射镜或透镜造成的图像畸变。本文提出了一种利用球面透镜进行实时目标检测的高效全方位视觉系统。为了克服图像失真和计算复杂的问题,采用粒子群优化的神经网络对物体和机器人到球面图像的距离进行建模。实验结果表明,我们的开发在精度和处理时间方面是有效的。
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Object Detection of Omnidirectional Vision Using PSO-Neural Network for Soccer Robot
The vision system in soccer robot is needed to recognize the object around the robot environment. Omnidirectional vision system has been widely developed to find the object such as a ball, goalpost, and the white line in a field and recognized the distance and an angle between the object and robot. The most challenging in develop Omni-vision system is image distortion resulting from spherical mirror or lenses. This paper presents an efficient Omni-vision system using spherical lenses for real-time object detection. Aiming to overcome the image distortion and computation complexity, the distance calculation between object and robot from the spherical image is modeled using the neural network with optimized by particle swarm optimization. The experimental result shows the effectiveness of our development in the term of accuracy and processing time.
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