Recognizing Art Style Automatically in painting with deep learning

The artistic style (or artistic movement) of a painting is a rich descriptor that captures both visual and historical information about the painting. Correctly identifying the artistic style of a paintings is crucial for indexing large artistic databases. In this paper, we investigate the use of deep residual neural to solve the problem of detecting the artistic style of a painting and outperform existing approaches by almost 10% on the Wikipaintings dataset (for 25 di erent style). To achieve this result, the network is rst pre-trained on ImageNet, and deeply retrained for artistic style. We empirically evaluate that to achieve the best performance, one need to retrain about 20 layers. This suggests that the two tasks are as similar as expected, and explain the previous success of hand crafted features. We also demonstrate that the style detected on the Wikipaintings dataset are consistent with styles detected on an independent dataset and describe a number of experiments we conducted to validate this approach both qualitatively and quantitatively.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Artistic style classification RASTA ResNet50 With bagging Top-1 Accuracy 0.611 # 1

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