Real-time Activation Pattern Monitoring and Uncertainty Characterisation in Image Classification

Shenglin Wang, Peng Wang, L. Mihaylova, Matthew Hill
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Abstract

Deep neural networks (DNNs) have become very popular recently and have proven their potential especially for image classification. However, their performance depends significantly on the network structure and data quality. This paper investigates the performance of DNNs and especially of faster region based convolutional neural networks (R-CNNs), called faster R-CNN when the network testing data differ significantly from the training data. This paper proposes a framework for monitoring the neuron patterns within a faster R-CNN by representing distributions of neuron activation patterns and by calculating corresponding distances between them, with the Kullback-Leibler divergence. The patterns of the activation states of ‘neurons’ within the network can therefore be observed if the faster R-CNN is ‘outside the comfort zone’, mostly when it works with noisy data and data that are significantly different from those used in the training stage. The validation is performed on publicly available datasets: MNIST [1] and PASCAL [2] and demonstrates that the proposed framework can be used for real-time monitoring of supervised classifiers.
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图像分类中的实时激活模式监测与不确定度表征
深度神经网络(dnn)近年来变得非常流行,并证明了其潜力,特别是在图像分类方面。然而,它们的性能在很大程度上取决于网络结构和数据质量。本文研究了当网络测试数据与训练数据有显著差异时,深度神经网络的性能,特别是基于更快区域的卷积神经网络(R-CNN)的性能,称为更快R-CNN。本文提出了一个框架,通过表示神经元激活模式的分布,并通过计算它们之间的相应距离,用Kullback-Leibler散度来监测更快的R-CNN中的神经元模式。因此,如果更快的R-CNN处于“舒适区之外”,则可以观察到网络中“神经元”的激活状态模式,主要是当它处理噪声数据和与训练阶段使用的数据明显不同的数据时。验证是在公开可用的数据集上进行的:MNIST[1]和PASCAL[2],并证明了所提出的框架可以用于实时监控监督分类器。
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