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Experiments in online expectation-based novelty-detection using 3D shape and colour perceptions for mobile robot inspection

机译:基于在线期望的新型检测实验,使用3D形状和移动机器人检查的颜色看法

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Novelty detection is a very useful function for detecting abnormal data in any application. An expectation-based novelty-detection approach has been introduced that learns the dynamic relationship model among normal data in order to predict the next expected data. Most novelty-detection systems use an offline approach with a fixed structure, a system type that has limitations when the data count in the environment is unknown. A new expectation-based novelty-detection system features an online recurrent neural network approach that learns the data by inserting new nodes or deleting unused nodes from its structure. Generally, to detect novelties, a global novelty threshold is defined to filter out all input data as novel whenever the prediction error of the network exceeds the threshold. However, because a neural network cannot learn to predict all classes of input data perfectly, using a global novelty threshold leads to the misclassification of the insufficiently learned normal data as novel. To overcome this problem, the novelty-detection system has been improved to learn local novelty thresholds alongside its learning to predict expectations. The proposed algorithm is applied to an online novelty detection using colour and depth data obtained from a Kinect sensor on a mobile robot. The performance of the expected novelty detector and its limitations during experiments are analysed and shown. Furthermore, colour and depth data as inputs into the novelty filter are separately analysed and their contributions on the overall novelty detection highlighted. In conclusion, the performance of the novelty filter could further be improved by applying a better feature-selection technique to extract more interesting features from high-dimensional input data. (C) 2019 Elsevier B.V. All rights reserved.
机译:新颖性检测是一种非常有用的功能,用于检测任何应用中的异常数据。已经引入了基于期望的新颖性检测方法,其学习了正常数据之间的动态关系模型,以预测下一个预期数据。大多数新奇检测系统使用具有固定结构的离线方法,当环境中的数据计数未知时具有限制的系统类型。基于新的期望的新颖性检测系统具有在线复发性神经网络方法,通过插入新节点或从其结构中删除未使用的节点来学习数据。通常,为了检测Novelties,定义全球性新颖性阈值以在网络的预测误差超过阈值时将所有输入数据作为新颖。然而,由于神经网络不能学习完全预测所有类别的输入数据,所以使用全球新颖性阈值导致错误分类的不充分学习的正常数据作为新颖。为了克服这个问题,提高了新颖性的检测系统,以便在学习中学习当地的新奇阈值以预测预期。所提出的算法应用于使用从移动机器人上的Kinect传感器获得的颜色和深度数据的在线新奇检测。分析并显示了预期的新奇探测器的性能及其在实验期间的局限性。此外,将颜色和深度数据分析为新颖性过滤器进入新颖性过滤器,并突出显示了对整体新奇检测的贡献。总之,通过应用更好的特征选择技术来提取来自高维输入数据的更有趣的特征,可以进一步提高新颖性滤波器的性能。 (c)2019年Elsevier B.V.保留所有权利。

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