Anomaly Detection is a relevant problem that arises in numerous real-world applications, especially when dealing with images. However, there has been little research for this task in the Continual Learning setting. In this work, we introduce a novel approach called SCALE (SCALing is Enough) to perform Compressed Replay in a framework for Anomaly Detection in Continual Learning setting. The proposed technique scales and compresses the original images using a Super Resolution model which, to the best of our knowledge, is studied for the first time in the Continual Learning setting. SCALE can achieve a high level of compression while maintaining a high level of image reconstruction quality. In conjunction with other Anomaly Detection approaches, it can achieve optimal results. To validate the proposed approach, we use a real-world dataset of images with pixel-based anomalies, with the scope to provide a reliable benchmark for Anomaly Detection in the context of Continual Learning, serving as a foundation for further advancements in the field.
翻译:异常探测是许多现实应用中产生的一个相关问题,特别是在处理图像时。然而,在连续学习环境中,对这一任务的研究很少。在这项工作中,我们引入了名为SCALE(SCALE已足够)的新颖方法,以便在连续学习环境中的异常探测框架中进行压缩回放。拟议的技术尺度和压缩原始图像,使用超级分辨率模型,而根据我们的知识,该模型是首次在连续学习环境中研究的。SCALE可以在保持高水平图像重建质量的同时实现高压。它与其他异常探测方法一起,可以取得最佳效果。为了验证拟议方法,我们使用一个带有像素异常的图像真实世界数据集,其范围是提供一个在连续学习背景下进行异常探测的可靠基准,作为进一步推进实地工作的基础。