Abstract
AbstractAiming at the problem of cartoon piracy and plagiarism, this paper proposes a method of cartoon copyright recognition based on character personality actions. This method can be used to compare the original cartoon actions with the action characteristics of pirated or copied cartoons to identify whether there is piracy or plagiarism. Firstly, an image preprocessing scheme for character extraction is designed. GrabCut interactive image segmentation algorithm was used to obtain cartoon characters, and then binarization and morphological processing were performed on the results. Secondly, a feature extraction scheme based on character profile, moving character and character pose is designed. By extracting the perimeter and area of the character contour, the length-to-width ratio of the smallest rectangle and the inclination angle of the contour, the character contour features are obtained. The three-dimensional coordinates are established by the central point position of the cartoon character in the two-dimensional image and the change of the character's zoom in and out, and the character's motion angle characteristics are calculated. By skeletonizing a character to obtain the pose characteristics, and using deburring operation to remove redundant branches, then extract the skeleton joint angle information. Finally, feature fusion is performed on the extracted features. The experimental results show that the proposed method breaks the limitation of the conventional single feature based recognition, and can better extract the character features including contour feature, motion feature and pose feature through multi-feature based extraction, so as to protect the cartoon copyright.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Reference25 articles.
1. A.V. Malviya, S.A. Ladhake, Pixel based image forensic technique for copy-move forgery detection using auto color correlogram. Procedia Comput. Sci. 79, 383–390 (2016)
2. S. Aouat, I. Ait-hammi, I. Hamouchene, A new approach for texture segmentation based on the Gray level co-occurrence matrix. Multimed. Tools Appl. 80, 24027–24052 (2021)
3. F. Zhu, M. Dai, C. Xie, Y. Song, L. Luo, Fractal descriptors based on quaternion Fourier transform for color texture analysis. J. Electron. Imaging 24(4), 043004 (2015)
4. M.S. Al-Ani, A.M. Darwesh, Target identification using a moment invariant approach. IEIE Trans. Smart Process. Comput. 8(5), 335–346 (2019)
5. H. Zhang, S. Li, X. Liu, Research on Gesture Recognition Based on Improved Canny & K-Means Algorithm and CNN. IOP Conference Series: Earth and Environmental Science 440(4), 1–8 (2020)