使用Grad-CAM热图的测试自动化-视觉AI的MLOps的未来管道段?

Markus Borg, Ronald Jabangwe, Simon Åberg, Arvid Ekblom, Ludwig Hedlund, August Lidfeldt
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引用次数: 9

摘要

机器学习(ML)是现代感知系统的基本组成部分。在过去的十年中,使用经过训练的深度神经网络的计算机视觉的性能优于先前基于仔细特征工程的方法。然而,大型机器学习模型的不透明性对汽车等关键应用来说是一个重大障碍。作为补救措施,梯度加权类激活映射(Grad-CAM)被提出提供模型内部的可视化解释。在本文中,我们演示了如何使用Grad-CAM热图来增加为行人地下通道训练的图像识别模型的可解释性。我们讨论了热图如何支持遵守欧盟对可信赖人工智能的七项关键要求。最后,我们建议在MLOps管道中添加自动热图分析作为管道段。我们相信,这样的构建块可以用来自动检测训练后的ml模型是否基于测试图像中的无效像素被激活,从而提示有偏差的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Test Automation with Grad-CAM Heatmaps - A Future Pipe Segment in MLOps for Vision AI?
Machine Learning (ML) is a fundamental part of modern perception systems. In the last decade, the performance of computer vision using trained deep neural networks has outperformed previous approaches based on careful feature engineering. However, the opaqueness of large ML models is a substantial impediment for critical applications such as in the automotive context. As a remedy, Gradient-weighted Class Activation Mapping (Grad-CAM) has been proposed to provide visual explanations of model internals. In this paper, we demonstrate how Grad-CAM heatmaps can be used to increase the explainability of an image recognition model trained for a pedestrian underpass. We argue how the heatmaps support compliance to the EU’s seven key requirements for Trustworthy AI. Finally, we propose adding automated heatmap analysis as a pipe segment in an MLOps pipeline. We believe that such a building block can be used to automatically detect if a trained ML-model is activated based on invalid pixels in test images, suggesting biased models.
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