Content-Based Image Retrieval for Painting Style with Convolutional Neural Network
With the availability of large paintings dataset on the online platform in recent years, it opens up a new research perspective and researcher started to investigate paintings in a new and different ways. While Convolutional Neural Networks (CNN) have been successfully applied in computer vision dom...
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Veröffentlicht in: | The Journal of The Institution of Engineers, Malaysia Malaysia, 2022-11, Vol.82 (3) |
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container_title | The Journal of The Institution of Engineers, Malaysia |
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creator | Tan, Wei Sheng Chin, Wan Yoke Lim, Khai Yin |
description | With the availability of large paintings dataset on the online platform in recent years, it opens up a new research perspective and researcher started to investigate paintings in a new and different ways. While Convolutional Neural Networks (CNN) have been successfully applied in computer vision domains, several researchers started to investigate the possibility of utilizing CNN for artwork classification and retrieval system. Image retrieval has been one of the most difficult disciplines in digital image processing because it requires scanning a large database for images that are comparable to the query image. It is commonly known that retrieval performance is largely influenced by feature representations in trained algorithm and similarity measures. Deep Learning has recently advanced significantly, and deep features based on deep learning have been widely used because it has been demonstrated that the features have great generalisation. In this paper, a convolutional neural network (CNN) is utilised to classify painting’s style and extract deep and high-level features from the paintings. Next, were used as an image retrieval system to retrieve similar images in artwork style of content which is useful for search or recommendation systems in online art collection. Our experiments show that this strategy significantly improves the performance of content-based image retrieval for the style retrieval task of painting and beat the current state-of-art for painting style classification. |
doi_str_mv | 10.54552/v82i3.122 |
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title | Content-Based Image Retrieval for Painting Style with Convolutional Neural Network |
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