Recognizing Artistic Style of Archaeological Image Fragments Using Deep Style Extrapolation
- URL: http://arxiv.org/abs/2501.00836v2
- Date: Tue, 14 Jan 2025 05:49:16 GMT
- Title: Recognizing Artistic Style of Archaeological Image Fragments Using Deep Style Extrapolation
- Authors: Gur Elkin, Ofir Itzhak Shahar, Yaniv Ohayon, Nadav Alali, Ohad Ben-Shahar,
- Abstract summary: Ancient artworks obtained in archaeological excavations usually suffer from a certain degree of fragmentation and physical degradation.
In this work, we present a generalized deep-learning framework for predicting the artistic style of image fragments.
- Score: 2.7233796151875245
- License:
- Abstract: Ancient artworks obtained in archaeological excavations usually suffer from a certain degree of fragmentation and physical degradation. Often, fragments of multiple artifacts from different periods or artistic styles could be found on the same site. With each fragment containing only partial information about its source, and pieces from different objects being mixed, categorizing broken artifacts based on their visual cues could be a challenging task, even for professionals. As classification is a common function of many machine learning models, the power of modern architectures can be harnessed for efficient and accurate fragment classification. In this work, we present a generalized deep-learning framework for predicting the artistic style of image fragments, achieving state-of-the-art results for pieces with varying styles and geometries.
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