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Towards better long-tailed oracle character recognition with adversarial data augmentation

Jing Li, Qiufeng Wang, Kaizhu Huang, Xi Yang, Rui Zhang, John Y. Goulermas

2023Pattern Recognition44 citationsDOIOpen Access PDF

Abstract

Deciphering oracle bone script is of great significance to the study of ancient Chinese culture as well as archaeology. Although recent studies on oracle character recognition have made substantial progress, they still suffer from the long-tailed data situation that results in a noticeable performance drop on the tail classes. To mitigate this issue, we propose a generative adversarial framework to augment oracle characters in the problematic classes. In this framework, the generator produces synthetic data through convex combinations of all the available samples in the corresponding classes, and is further optimized through adversarial learning with the classifier and simultaneously the discriminator . Meanwhile, we introduce Repatch to generalize samples in the generator. Since tail classes do not have sufficient data for convex combinations , we propose the TailMix mechanism to generate suitable tail class samples from other classes. Experimental results show that our proposed algorithm obtains remarkable performance in oracle character recognition and achieves new state-of-the-art average (total) accuracy with 86.03% (89.46%), 86.54% (93.86%), 95.22% (96.17%) on the three datasets Oracle-AYNU, OBC306 and Oracle-20K, respectively.

Topics & Concepts

OracleDiscriminatorComputer scienceClassifier (UML)Character (mathematics)Generator (circuit theory)Artificial intelligencePattern recognition (psychology)Generative grammarMachine learningMathematicsPhysicsQuantum mechanicsPower (physics)Software engineeringTelecommunicationsGeometryDetectorHandwritten Text Recognition TechniquesDigital Media Forensic DetectionImage Processing and 3D Reconstruction
Towards better long-tailed oracle character recognition with adversarial data augmentation | Litcius