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Photozilla: A Large-Scale Photography Dataset and Visual Embedding for 20 Photography Styles

2021-06-21 18:45:06
Trisha Singhal, Junhua Liu, Lucienne T. M. Blessing, Kwan Hui Lim

Abstract

The advent of social media platforms has been a catalyst for the development of digital photography that engendered a boom in vision applications. With this motivation, we introduce a large-scale dataset termed 'Photozilla', which includes over 990k images belonging to 10 different photographic styles. The dataset is then used to train 3 classification models to automatically classify the images into the relevant style which resulted in an accuracy of ~96%. With the rapid evolution of digital photography, we have seen new types of photography styles emerging at an exponential rate. On that account, we present a novel Siamese-based network that uses the trained classification models as the base architecture to adapt and classify unseen styles with only 25 training samples. We report an accuracy of over 68% for identifying 10 other distinct types of photography styles. This dataset can be found at this https URL

Abstract (translated)

URL

https://arxiv.org/abs/2106.11359

PDF

https://arxiv.org/pdf/2106.11359.pdf


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