arXiv Open Access 2024

Style-based Clustering of Visual Artworks and the Play of Neural Style-Representations

Abhishek Dangeti Pavan Gajula Vivek Srivastava Vikram Jamwal
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Abstrak

Clustering artworks based on style can have many potential real-world applications like art recommendations, style-based search and retrieval, and the study of artistic style evolution of an artist or in an artwork corpus. We introduce and deliberate over the notion of 'Style-based clustering of visual artworks'. We argue that clustering artworks based on style is largely an unaddressed problem. We explore and devise different neural feature representations - from the style-classification, style-transfer to large language vision models - that can be then used for style-based clustering. Our objective is to assess the relative effectiveness of these devised style-based clustering approaches through qualitative and quantitative analysis by applying them to multiple artwork corpora and curated synthetically styled datasets. Besides providing a broad framework for style-based clustering and evaluation, our analysis provides some key novel insights on feature representations, architectures and implications for style-based clustering.

Topik & Kata Kunci

Penulis (4)

A

Abhishek Dangeti

P

Pavan Gajula

V

Vivek Srivastava

V

Vikram Jamwal

Format Sitasi

Dangeti, A., Gajula, P., Srivastava, V., Jamwal, V. (2024). Style-based Clustering of Visual Artworks and the Play of Neural Style-Representations. https://arxiv.org/abs/2409.08245

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Tahun Terbit
2024
Bahasa
en
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arXiv
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Open Access ✓