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Putting Image Manipulations in Context: Robustness Testing for Safe Perception

机译:将图像处理置于上下文中:针对安全感知的鲁棒性测试

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We introduce a method to evaluate the robustness of perception systems to the wide variety of conditions that a deployed system will encounter. Using person detection as a sample safety-critical application, we evaluate the robustness of several state-of-the-art perception systems to a variety of common image perturbations and degradations. We introduce two novel image perturbations that use “contextual information” (in the form of stereo image data) to perform more physically-realistic simulation of haze and defocus effects. For both standard and contextual mutations, we show cases where performance drops catastrophically in response to barely-perceptible changes. We also show how robustness to contextual mutators can be predicted without the associated contextual information in some cases.
机译:我们介绍一种方法来评估感知系统对已部署系统将要遇到的各种条件的鲁棒性。使用人员检测作为对安全性至关重要的示例应用程序,我们评估了几种最新的感知系统对各种常见图像扰动和退化的鲁棒性。我们介绍了两种新颖的图像扰动,它们使用“上下文信息”(以立体图像数据的形式)对雾度和散焦效果进行了更逼真的模拟。对于标准突变和上下文突变,我们都显示了在响应几乎无法感知的变化时性能急剧下降的情况。我们还显示了在某些情况下,如果没有关联的上下文信息,可以如何预测上下文关联变量的鲁棒性。

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