论文标题
皇冠摄像头:在航空图像中的树冠检测的可解释的视觉解释
Crown-CAM: Interpretable Visual Explanations for Tree Crown Detection in Aerial Images
论文作者
论文摘要
``Black-Box''模型的视觉解释使研究人员可解释的人工智能(XAI)以人为理解的方式解释该模型的决策。在本文中,我们提出了可解释的类激活映射,以克服以前方法的不准确的定位和计算复杂性,同时生成可靠的视觉解释,以解决空中图像中树冠检测的挑战性和动态问题。它由无监督的激活图选择,本地分数图的计算以及非上下文背景抑制作用,以有效地在具有茂密的林木或没有树冠的场景的情况下有效地提供树冠的细颗粒定位。此外,引入了与联合(IOU)基于联合(IOU)的两个交叉点,以有效地量化图像中具有或什至没有树冠的区域的生成解释的准确性和不准确性。 Empirical evaluations demonstrate that the proposed Crown-CAM outperforms the Score-CAM, Augmented Score-CAM, and Eigen-CAM methods by an average IoU margin of 8.7, 5.3, and 21.7 (and 3.3, 9.8, and 16.5) respectively in improving the accuracy (and decreasing inaccuracy) of visual explanations on the challenging NEON tree crown dataset.
Visual explanation of ``black-box'' models allows researchers in explainable artificial intelligence (XAI) to interpret the model's decisions in a human-understandable manner. In this paper, we propose interpretable class activation mapping for tree crown detection (Crown-CAM) that overcomes inaccurate localization & computational complexity of previous methods while generating reliable visual explanations for the challenging and dynamic problem of tree crown detection in aerial images. It consists of an unsupervised selection of activation maps, computation of local score maps, and non-contextual background suppression to efficiently provide fine-grain localization of tree crowns in scenarios with dense forest trees or scenes without tree crowns. Additionally, two Intersection over Union (IoU)-based metrics are introduced to effectively quantify both the accuracy and inaccuracy of generated explanations with respect to regions with or even without tree crowns in the image. Empirical evaluations demonstrate that the proposed Crown-CAM outperforms the Score-CAM, Augmented Score-CAM, and Eigen-CAM methods by an average IoU margin of 8.7, 5.3, and 21.7 (and 3.3, 9.8, and 16.5) respectively in improving the accuracy (and decreasing inaccuracy) of visual explanations on the challenging NEON tree crown dataset.