Xaitk-Saliency:一个开源的可解释的AI工具包

Brian Hu, Paul Tunison, Brandon Richard Webster, Anthony J. Hoogs
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引用次数: 3

摘要

利用深度学习等技术的人工智能(AI)的进步推动了计算机视觉等领域的最新进展。然而,这些算法仍然经常被视为“黑盒子”,无法轻易解释它们是如何得出最终输出决策的。显著性图是一种常用的可解释人工智能(XAI)形式,它表示算法在决策过程中所关注的输入特征。在这里,我们将介绍开源的XAI -saliency包,这是一个用于显著性的XAI框架和工具包。我们通过突出突出显着性地图的两个示例用例来展示其模块化和灵活性:(1)对象检测模型比较和(2)用于人员重新识别的二重体显着性。我们还展示了如何将xaitk-saliency包与可视化工具配对,以支持显著性图的交互式探索。我们的研究结果表明,显著性地图可能在人工智能模型的验证和验证中发挥关键作用,确保它们的可信使用和部署。该代码可在https://github.com/xaitk/xaitk-saliency公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Xaitk-Saliency: An Open Source Explainable AI Toolkit for Saliency
Advances in artificial intelligence (AI) using techniques such as deep learning have fueled the recent progress in fields such as computer vision. However, these algorithms are still often viewed as "black boxes", which cannot easily explain how they arrived at their final output decisions. Saliency maps are one commonly used form of explainable AI (XAI), which indicate the input features an algorithm paid attention to during its decision process. Here, we introduce the open source xaitk-saliency package, an XAI framework and toolkit for saliency. We demonstrate its modular and flexible nature by highlighting two example use cases for saliency maps: (1) object detection model comparison and (2) doppelganger saliency for person re-identification. We also show how the xaitk-saliency package can be paired with visualization tools to support the interactive exploration of saliency maps. Our results suggest that saliency maps may play a critical role in the verification and validation of AI models, ensuring their trusted use and deployment. The code is publicly available at: https://github.com/xaitk/xaitk-saliency.
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