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Recognizing Instagram Filtered Images with Feature De-Stylization

机译:识别Instagram过滤了具有功能去风格化的图像

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Deep neural networks have been shown to suffer from poor generalization when small perturbations are added (like Gaussian noise), yet little work has been done to evaluate their robustness to more natural image transformations like photo filters. This paper presents a study on how popular pre-trained models are affected by commonly used Instagram filters. To this end, we introduce ImageNet-Instagram, a filtered version of ImageNet, where 20 popular Instagram filters are applied to each image in ImageNet. Our analysis suggests that simple structure preserving filters which only alter the global appearance of an image can lead to large differences in the convolutional feature space. To improve generalization, we introduce a lightweight de-stylization module that predicts parameters used for scaling and shifting feature maps to "undo" the changes incurred by filters, inverting the process of style transfer tasks. We further demonstrate the module can be readily plugged into modern CNN architectures together with skip connections. We conduct extensive studies on ImageNet-Instagram, and show quantitatively and qualitatively, that the proposed module, among other things, can effectively improve generalization by simply learning normalization parameters without retraining the entire network, thus recovering the alterations in the feature space caused by the filters.
机译:当添加小的扰动时,深度神经网络被证明遭受较差的泛化(如高斯噪声),​​已经完成了很少的工作来评估它们对照片过滤器等自然图像变换的鲁布度。本文提出了对受欢迎的预训练模型受常用Instagram过滤器影响的研究。为此,我们介绍了ImageNet-Instagram,这是一个过滤的Imagenet版本,其中20个流行的Instagram过滤器应用于ImageNet中的每个图像。我们的分析表明,只有改变图像的全局外观的简单结构保持过滤器可能导致卷积特征空间的大差异。为了提高泛化,我们介绍了一个轻量级的脱模模块,它预测用于缩放和转换特征映射的参数,以“撤消”滤波器产生的更改,反转了样式传输任务的过程。我们进一步展示了模块可以随心所欲地插入现代CNN架构以及跳过连接。我们对Imagenet-Instagram进行广泛的研究,并定量和定性地显示,其中所提出的模块在其他事情可以通过简单地学习归一化参数来有效地改善泛化而无需再培训整个网络,从而恢复由所引起的特征空间中的改变过滤器。

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