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Efficient Objects Identification for a KidSize Humanoid Soccer Robot: Using Feedforward Neural Networks with Image Segmentation

机译:有效的物体识别儿童化人形足球机器人:使用具有图像分割的前馈神经网络

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One of the biggest problems faced in robot soccer tournaments is related to object identification in the soccer field. The ball, field marks, crossbars of the goal, the opponent players or teammates are considered objects and should be identified by the robot soccer player in the category of KidSize RoboCup Humanoid League. The main target of this paper is to present a robotic architecture composed of the Software and Hardware Modules responsible for identifying these objects. The Software Module was composed of a DataBase (DB) with images of the objects to be identified and a Feedforward Neural Network (FNN) trained by the Neural Network Toolbox (NNT) of the MATrix LABoratory (MATLAB). In order to integrate the identification process with the Hardware Module, it was necessary to develop the NeuralNet library. This library was implemented in JAVA, making it compatible with multiple platforms. The purpose of this library was to transfer the FNN already trained by the NNT to the Raspberry Pi 3B. The Raspberry Pi 3B was responsible for processing the images captured by the Vision System of the robotic player. Also, all the objects in the field were identified through the trained FNN and the Open Source Computer Vision (OpenCV) library. The results showed an efficiency of about 82% in ball identification, 92% in field marks, 81% in crossbars of the goal, and 93% in opponent players or teammates.
机译:机器人足球锦标赛面临的最大问题之一与足球场中的对象识别有关。球,田间标记,目标的跨界,对手球员或队友被认为是对象,应该由机器人足球运动员在儿童化人形联赛中的类别中识别。本文的主要目标是呈现由负责识别这些对象的软件和硬件模块组成的机器人架构。软件模块由数据库(DB)组成,其中具有要识别的对象的图像和由矩阵实验室(MATLAB)的神经网络工具箱(NNT)训练的前馈神经网络(FNN)。要将识别过程与硬件模块集成,有必要开发NeuralNet库。此库在Java中实现,使其与多个平台兼容。该库的目的是将已经受到NNT培训的FNN转移到覆盆子PI 3b。 Raspberry PI 3B负责处理由机器人播放器的视觉系统捕获的图像。此外,通过训练的FNN和开源计算机视觉(OpenCV)库识别该字段中的所有对象。结果表明,球鉴定的效率约为82%,田间标记92%,目标的跨界人数为81%,对手球员或队友中有93%。

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