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Evaluation of the bounding box uncertainty of deep-learning object detection in HALCON software

机译:在HALCON软件中评估深度学习目标检测的边界框不确定性

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Deep neural networks have become more and more relevant for vision systems, for object detection and classification in industrial fields, such as robot navigation, monitoring and tracking. For such applications, vision systems have to be robust to environment conditions, occlusions and very accurate, as for bin picking. In this paper, we evaluate the performances of deep learning object detection neural networks in HALCON software, by investigating the uncertainty of bounding box position for object detection and the impact of disturbances. In this study, results evidenced the increase of bounding box uncertainty and the reduction of confidence of neural networks when disturbances are introduced, as well as the increment of uncertainty, when confidence lowers. When errors are introduced in labeling, the uncertainty of the bounding box position becomes higher, but lower than the error introduced.
机译:深度神经网络对于视觉系统,工业领域的对象检测和分类(例如,机器人导航,监视和跟踪)越来越重要。对于此类应用,视觉系统必须对环境条件,遮挡物具有鲁棒性,并且非常准确,例如垃圾箱拾取。在本文中,我们通过研究用于对象检测的边界框位置的不确定性和干扰的影响,来评估HALCON软件中深度学习对象检测神经网络的性能。在这项研究中,结果证明了引入干扰时边界框不确定性的增加和神经网络置信度的降低,以及置信度降低时不确定性的增加。当在标签中引入错误时,边界框位置的不确定性会变得更高,但会低于引入的错误。

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