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Image Aesthetic Quality Scoring Method Based on Feature Complementation |
XIE Yanjuan, CHEN Zhaojiong, YE Dongyi |
College of Mathematics and Computer Science, Fuzhou University, Fuzhou 350116 |
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Abstract The deep convolutional neural network method can hardly analyze specific regions of an image and the relationship between those regions. A method for image aesthetic quality assessment is proposed by means of complementary combination of deep and handcrafted features. The specific regions dominating the aesthetic quality of the image are identified. Then, five groups of aesthetic relevant handcrafted features including line angles feature and clarity comparison feature are selected and designed. The deep features are acquired using Siamese network. Support vector regression algorithm is then applied to evaluate the score of the aesthetic quality of the image based on those handcrafted and deep features. The score is adjusted and finalized in light of the weight of Spearman rank-order correlation coefficient. Experimental results show that the proposed method outperforms the existing methods and the result is consistent with subjective assessment results.
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Received: 05 June 2017
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Fund:Supported by National Natural Science Foundation of China(No.61502105) |
About author:: (XIE Yanjuan, born in 1994, master stu-dent. Her research interests include image processing.) (CHEN Zhaojiong(Corresponding author), born in 1964, master, professor. Her research interests include image processing and computational intelligence.) (YE Dongyi, born in 1964, Ph.D., profe-ssor. His research interests include computational intelligence and data mining.) |
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