论文标题
用多尺度定向图像表示解释图像分类器
Explaining Image Classifiers with Multiscale Directional Image Representation
论文作者
论文摘要
已知图像分类器很难解释,因此需要解释方法才能理解其决策。我们提出了Shearletx,这是一种基于剪切转换的图像分类器的新颖掩模解释方法 - 多尺度定向图像表示。当前的面具解释方法是通过平滑度限制的正规化方法,可防止不良的细粒度解释伪像。但是,掩模的平滑度限制了其分离与分类器相关的细尾图模式的能力,这些模式与附近的滋扰模式相关,不会影响分类器。 Shearletx通过避免平滑度正规化在一起解决这个问题,以剪切稀疏的约束代替它。最终的解释包括原始图像的几个边,纹理和光滑部分,这些边缘与分类器的决策最相关。为了支持我们的方法,我们为解释工件和信息理论得分提出了数学定义,以评估掩盖说明的质量。我们使用这些新指标证明了shearletx优于先前基于掩模的解释方法,并呈现示例性的情况,在这种情况下,分离细节模式可以解释以前无法解释的现象。
Image classifiers are known to be difficult to interpret and therefore require explanation methods to understand their decisions. We present ShearletX, a novel mask explanation method for image classifiers based on the shearlet transform -- a multiscale directional image representation. Current mask explanation methods are regularized by smoothness constraints that protect against undesirable fine-grained explanation artifacts. However, the smoothness of a mask limits its ability to separate fine-detail patterns, that are relevant for the classifier, from nearby nuisance patterns, that do not affect the classifier. ShearletX solves this problem by avoiding smoothness regularization all together, replacing it by shearlet sparsity constraints. The resulting explanations consist of a few edges, textures, and smooth parts of the original image, that are the most relevant for the decision of the classifier. To support our method, we propose a mathematical definition for explanation artifacts and an information theoretic score to evaluate the quality of mask explanations. We demonstrate the superiority of ShearletX over previous mask based explanation methods using these new metrics, and present exemplary situations where separating fine-detail patterns allows explaining phenomena that were not explainable before.