CVCLJan 19, 2021

ArtEmis: Affective Language for Visual Art

arXiv:2101.07396v1179 citations
Originality Incremental advance
AI Analysis

This work addresses the need for affective language generation in computer vision, particularly for visual art, by providing a novel dataset and models, though it is incremental in building on prior captioning methods.

The authors tackled the problem of understanding and explaining emotional responses to visual art by creating a large-scale dataset (ArtEmis) with 439K emotion attributions and explanations on 81K artworks, and training captioning systems that produce captions reflecting semantic and abstract content beyond existing datasets.

We present a novel large-scale dataset and accompanying machine learning models aimed at providing a detailed understanding of the interplay between visual content, its emotional effect, and explanations for the latter in language. In contrast to most existing annotation datasets in computer vision, we focus on the affective experience triggered by visual artworks and ask the annotators to indicate the dominant emotion they feel for a given image and, crucially, to also provide a grounded verbal explanation for their emotion choice. As we demonstrate below, this leads to a rich set of signals for both the objective content and the affective impact of an image, creating associations with abstract concepts (e.g., "freedom" or "love"), or references that go beyond what is directly visible, including visual similes and metaphors, or subjective references to personal experiences. We focus on visual art (e.g., paintings, artistic photographs) as it is a prime example of imagery created to elicit emotional responses from its viewers. Our dataset, termed ArtEmis, contains 439K emotion attributions and explanations from humans, on 81K artworks from WikiArt. Building on this data, we train and demonstrate a series of captioning systems capable of expressing and explaining emotions from visual stimuli. Remarkably, the captions produced by these systems often succeed in reflecting the semantic and abstract content of the image, going well beyond systems trained on existing datasets. The collected dataset and developed methods are available at https://artemisdataset.org.

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