CVLGAug 14, 2014

Toward Automated Discovery of Artistic Influence

arXiv:1408.3218v198 citations
Originality Synthesis-oriented
AI Analysis

This addresses the task of discovering artistic influences for art historians, but it is incremental as it builds on existing classification and similarity methods.

The paper tackles the problem of computer-automated suggestion of artistic influences by comparing classification methodologies for fine-art style and investigating similarity measures between paintings and artists, resulting in a visualization called the Map of Artists.

Considering the huge amount of art pieces that exist, there is valuable information to be discovered. Examining a painting, an expert can determine its style, genre, and the time period that the painting belongs. One important task for art historians is to find influences and connections between artists. Is influence a task that a computer can measure? The contribution of this paper is in exploring the problem of computer-automated suggestion of influences between artists, a problem that was not addressed before in a general setting. We first present a comparative study of different classification methodologies for the task of fine-art style classification. A two-level comparative study is performed for this classification problem. The first level reviews the performance of discriminative vs. generative models, while the second level touches the features aspect of the paintings and compares semantic-level features vs. low-level and intermediate-level features present in the painting. Then, we investigate the question "Who influenced this artist?" by looking at his masterpieces and comparing them to others. We pose this interesting question as a knowledge discovery problem. For this purpose, we investigated several painting-similarity and artist-similarity measures. As a result, we provide a visualization of artists (Map of Artists) based on the similarity between their works

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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