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KS(conf): A Light-Weight Test if a ConvNet Operates Outside of Its Specifications

机译:KS(conf):如果ConvNet操作超出其规格,则进行轻量测试

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Computer vision systems for automatic image categorization have become accurate and reliable enough that they can run continuously for days or even years as components of real-world commercial applications. A major open problem in this context, however, is quality control. Good classification performance can only be expected if systems run under the specific conditions, in particular data distributions, that they were trained for. Surprisingly, none of the currently used deep network architectures have a built-in functionality that could detect if a network operates on data from a distribution it was not trained for, such that potentially a warning to the human users could be triggered. In this work, we describe KS(conf), a procedure for detecting such outside of specifications (out-of-specs) operation, based on statistical testing of the network outputs. We show by extensive experiments using the ImageNet, AwA2 and DAVIS datasets on a variety of ConvNets architectures that KS(conf) reliably detects out-of-specs situations. It furthermore has a number of properties that make it a promising candidate for practical deployment: it is easy to implement, adds almost no overhead to the system, works with all networks, including pretrained ones, and requires no a priori knowledge of how the data distribution could change.
机译:用于自动图像分类的计算机视觉系统已经变得足够准确和可靠,以至于它们可以作为实际商业应用程序的组件连续运行几天甚至几年。然而,在这种情况下,主要的开放问题是质量控制。仅当系统在经过培训的特定条件下(尤其是数据分布)运行时,才有望获得良好的分类性能。令人惊讶的是,当前使用的深层网络体系结构都没有内置功能可以检测网络是否对未经培训的分布中的数据进行操作,从而有可能触发对人类用户的警告。在这项工作中,我们描述KS(conf),这是一种基于网络输出的统计测试来检测这种超出规格(超出规格)操作的过程。我们通过在各种ConvNets架构上使用ImageNet,AwA2和DAVIS数据集进行的广泛实验表明,KS(conf)能够可靠地检测出不合规格的情况。此外,它还具有许多特性,使其有可能成为实际部署的候选者:它易于实现,几乎不增加系统开销,可与包括预训练的网络在内的所有网络一起使用,并且无需先验知识即可了解数据的处理方式分布可能会改变。

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