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Robust High Dimensional Stream Classification with Novel Class Detection

机译:具有新型类检测的强大的高维流分类

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A primary challenge in label prediction over a data stream is the emergence of instances belonging to unknown or novel class over time. Traditionally, studies addressing this problem aim to detect such instances using cluster-based mechanisms. They typically assume that instances from the same class are closer to each other than those belonging to different classes in observed feature space. Unfortunately, this may not hold true in higher-dimensional feature space such as images. In recent years, Convolutional neural network (CNN) have emerged as a leading system to be employed in many real-world application. Yet, based on the assumption of closed world dataset with a fixed number of categories, CNN lacks robustness for novel class detection, so it is unclear on how such models can be used to deal with novel class instances along a high-dimensional image stream. In this paper, we focus on addressing this challenge by proposing an effective learning framework called CNN-based Prototype Ensemble (CPE) for novel class detection and correction. Our framework includes a prototype ensemble loss (PE) to improve the intra-class compactness and expand inter-class separateness in the output feature representation, thereby enabling the robustness of novel class detection. Moreover, we provide an incremental learning strategy which maintains a constant amount of exemplars to update the network, making it more practical for real-world application. We empirically demonstrate the effectiveness of our framework by comparing its performance over multiple realworld image benchmark data streams with existing state-of-theart data stream detection techniques. The implementation of CPE is on: https://github.com/Vitvicky/Convolutional-Net-PrototypeEnsemble
机译:在标签预测在数据流A主要挑战是随着时间的推移,属于未知的或新的类的实例的出现。传统上,研究解决这个问题的目标是使用基于集群的机制来检测这种情况。它们典型地假设从相同类的实例是彼此靠近比所观察到的特征空间属于不同的类。不幸的是,这可能不是持有高维特征空间真的如图像。近年来,卷积神经网络(CNN)已成为在许多现实世界的应用程序中采用的领先的系统。然而,基于封闭世界的数据集的具有固定数量的类别的假设,CNN缺乏对小说类检测的鲁棒性,所以它是款怎么这样可以用来对付沿着高维图像流小说类实例不清楚。在本文中,我们重点解决通过提出所谓有效的学习框架,这个挑战CNN基于原型合奏(CPE)的新一类检测和纠正。我们的框架包括一个原型合奏损失(PE),以改善类内的紧凑性和扩展类间分离性在输出特征表示,从而使新的类检测的鲁棒性。此外,我们提供维护典范更新网络的恒定量,使之成为现实世界的应用更实用的增量学习策略。我们根据经验其性能在多个现实世界图像的基准数据进行比较,证明了我们框架的有效性流与现有国家的theart数据流检测技术。 CPE的实施是:https://github.com/Vitvicky/Convolutional-Net-PrototypeEnsemble

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