A Deep Learning Perspective on Beauty Sentiment and Remembrance of Art

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A Deep Learning Perspective on Beauty Sentiment and Remembrance of Art

Abstract: With the emergence of large digitized fine art collections and the successful performance of deep learning techniques, new research prospects unfold in the intersection of artificial intelligence and art. In order to explore the applicability of deep learning techniques in understanding art images beyond object recognition and classification, we employ convolutional neural networks (CNN) to predict scores related to three subjective aspects of human perception: aesthetic evaluation of the image, sentiment evoked by the image and memorability of the image. For each concept, we evaluate several different CNN models trained on various natural image datasets and select the best performing model based on the qualitative results and the comparison with existing subjective ratings of artworks. Furthermore, we employ different decision tree based machine learning models to analyze the relative importance of various image features related to content, composition and color in determining image aesthetics, visual sentiment and memorability scores. Our findings suggest that content and image lighting have significant influence on aesthetics , that color vividness and harmony strongly


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