Artistic Style Recognition: Combining Deep and Shallow Neural Networks for Painting Classification

This study’s main goal is to create a useful software application for finding and classifying fine art photos in museums and art galleries. There is an increasing need for tools to swiftly analyze and arrange art collections based on their artistic styles as a result of the digitization of art collections. To increase the accuracy of the style categorization, the suggested technique involves two parts. The input image is split into five sub-patches in the first stage. A DCNN that has been particularly trained for this task is then used to classify each patch individually. A decision-making module using a shallow neural network is part of the second phase. Probability vectors acquired from the first-phase classifier are used to train this network. The results from each of the five patches are combined in this phase to deduce the final style classification for the input image. One key advantage of this approach is employing probability vectors rather than images, and the second phase is trained separately from the first. This helps compensate for any potential errors made during the first phase, improving accuracy in the final classification. To evaluate the proposed method, six various already-trained CNN models, namely AlexNet, VGG-16, VGG-19, GoogLeNet, ResNet-50, and InceptionV3, were employed as the first-phase classifiers. The second-phase classifier was implemented as a shallow neural network. By using four representative art datasets, experimental trials were conducted using the Australian Native Art dataset, the WikiArt dataset, ILSVRC, and Pandora 18k. The findings showed that the recommended strategy greatly surpassed existing methods in terms of style categorization accuracy and precision. Overall, the study assists in creating efficient software systems for analyzing and categorizing fine art images, making them more accessible to the general public through digital platforms. Using pre-trained models, we were able to attain an accuracy of 90.7. Our model performed better with a higher accuracy of 96.5 as a result of fine-tuning and transfer learning.

[1]  Kai Liu,et al.  Research on painting image classification based on convolution neural network , 2023, International Conference on Artificial Intelligence and Computer Engineering (ICAICE 2022).

[2]  Qianqian Qi,et al.  Classification of skin lesions with generative adversarial networks and improved MobileNetV2 , 2023, Int. J. Imaging Syst. Technol..

[3]  Huajun Wang,et al.  Sparse and robust SVM classifier for large scale classification , 2023, Applied Intelligence.

[4]  Bahzad Charbuty,et al.  Classification Based on Decision Tree Algorithm for Machine Learning , 2021, Journal of Applied Science and Technology Trends.

[5]  Tomislav Lipic,et al.  Fine-tuning Convolutional Neural Networks for fine art classification , 2018, Expert Syst. Appl..

[6]  Fabian Gieseke,et al.  Artistic movement recognition by consensus of boosted SVM based experts , 2018, J. Vis. Commun. Image Represent..

[7]  Francesco Bianconi,et al.  Evaluation of visual descriptors for painting categorisation , 2018, IOP Conference Series: Materials Science and Engineering.

[8]  Luis González Abril,et al.  Categorizing paintings in art styles based on qualitative color descriptors, quantitative global features and machine learning (QArt-Learn) , 2018, Expert Syst. Appl..

[9]  Wei-Ta Chu,et al.  Image Style Classification Based on Learnt Deep Correlation Features , 2018, IEEE Transactions on Multimedia.

[10]  Mohamed Elhoseiny,et al.  The Shape of Art History in the Eyes of the Machine , 2018, AAAI.

[11]  Masoud Makrehchi,et al.  Predicting and Grouping Digitized Paintings by Style using Unsupervised Feature Learning. , 2017, Journal of cultural heritage.

[12]  Florian Yger,et al.  Recognizing Art Style Automatically in Painting with Deep Learning , 2017, ACML.

[13]  Hongxun Yao,et al.  Deep feature extraction and combination for remote sensing image classification based on pre-trained CNN models , 2017, International Conference on Digital Image Processing.

[14]  Jian Yang,et al.  Convolution Neural Networks With Two Pathways for Image Style Recognition , 2017, IEEE Transactions on Image Processing.

[15]  Eric O. Postma,et al.  Learning scale-variant and scale-invariant features for deep image classification , 2016, Pattern Recognit..

[16]  Eric O. Postma,et al.  Toward Discovery of the Artist's Style: Learning to recognize artists by their artworks , 2015, IEEE Signal Processing Magazine.

[17]  Michael S. Bernstein,et al.  ImageNet Large Scale Visual Recognition Challenge , 2014, International Journal of Computer Vision.

[18]  Michael Felsberg,et al.  Painting-91: a large scale database for computational painting categorization , 2014, Machine Vision and Applications.

[19]  Geoffrey E. Hinton,et al.  ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.

[20]  Lior Shamir,et al.  Impressionism, expressionism, surrealism: Automated recognition of painters and schools of art , 2010, TAP.

[21]  Paul DiMaggio Classification in Art. , 1987 .

[22]  Z. Yang Classification of picture art style based on VGGNET , 2021 .