Interpretable Image Classification via Non-parametric Part Prototype Learning
Journal:
arXiv
Published Date:
Mar 13, 2025
Abstract
Classifying images with an interpretable decision-making process is a
long-standing problem in computer vision. In recent years, Prototypical Part
Networks has gained traction as an approach for self-explainable neural
networks, due to their ability to mimic human visual reasoning by providing
explanations based on prototypical object parts. However, the quality of the
explanations generated by these methods leaves room for improvement, as the
prototypes usually focus on repetitive and redundant concepts. Leveraging
recent advances in prototype learning, we present a framework for part-based
interpretable image classification that learns a set of semantically
distinctive object parts for each class, and provides diverse and comprehensive
explanations. The core of our method is to learn the part-prototypes in a
non-parametric fashion, through clustering deep features extracted from
foundation vision models that encode robust semantic information. To
quantitatively evaluate the quality of explanations provided by ProtoPNets, we
introduce Distinctiveness Score and Comprehensiveness Score. Through evaluation
on CUB-200-2011, Stanford Cars and Stanford Dogs datasets, we show that our
framework compares favourably against existing ProtoPNets while achieving
better interpretability. Code is available at:
https://github.com/zijizhu/proto-non-param.