CVAug 29, 2023

ARTxAI: Explainable Artificial Intelligence Curates Deep Representation Learning for Artistic Images using Fuzzy Techniques

arXiv:2308.15284v116 citationsh-index: 73
Originality Incremental advance
AI Analysis

This work addresses the challenge of automatic art analysis for researchers and practitioners by providing incremental improvements in classification accuracy and interpretability.

The paper tackled the problem of improving generalization and performance in artistic image classification by proposing context-aware features and an explainable AI method using fuzzy rules to map visual traits to deep learning features, achieving up to 6% and 26% more accurate results compared to other solutions.

Automatic art analysis employs different image processing techniques to classify and categorize works of art. When working with artistic images, we need to take into account further considerations compared to classical image processing. This is because such artistic paintings change drastically depending on the author, the scene depicted, and their artistic style. This can result in features that perform very well in a given task but do not grasp the whole of the visual and symbolic information contained in a painting. In this paper, we show how the features obtained from different tasks in artistic image classification are suitable to solve other ones of similar nature. We present different methods to improve the generalization capabilities and performance of artistic classification systems. Furthermore, we propose an explainable artificial intelligence method to map known visual traits of an image with the features used by the deep learning model considering fuzzy rules. These rules show the patterns and variables that are relevant to solve each task and how effective is each of the patterns found. Our results show that our proposed context-aware features can achieve up to $6\%$ and $26\%$ more accurate results than other context- and non-context-aware solutions, respectively, depending on the specific task. We also show that some of the features used by these models can be more clearly correlated to visual traits in the original image than others.

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