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首页> 外文期刊>International journal of online engineering >Faster R-CNN for Object Location in a Virtual Environment for Sorting Task
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Faster R-CNN for Object Location in a Virtual Environment for Sorting Task

机译:在虚拟环境中用于排序任务的对象定位更快的R-CNN

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This paper presents the implementation of a mobile robotic arm simulation whose task is to order different objects randomly distributed in a workspace. To develop this task, it is used a Faster R-CNN which is going to identify and locate the disordered elements, reaching 99% accuracy in validation tests and 100% in real-time tests, i.e. the robot was able to collect and locate all the objects to be ordered, taking into account that the virtual environment is controlled and the size of the input image obtained from the workspace to be entered to the network should be 700x525 px.
机译:本文介绍了一种移动机器人手臂仿真的实现,该机器人的任务是对工作空间中随机分布的不同对象进行排序。为了执行此任务,它使用了Faster R-CNN,它将识别和定位混乱的元素,在验证测试中达到99%的准确性,在实时测试中达到100%,即,机器人能够收集并定位所有考虑到要控制虚拟环境,并且要从工作空间获得的输入图像的大小(要输入到网络),应该订购的对象应为700x525 px。

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