Takuma Udagawa, Aashka Trivedi, et al.
EMNLP 2023
This paper describes an optical recognition system for the handprinted Chinese characters. It is based on a novel string representation method and an inductive learning scheme that allows flexible (or elastic) representation and matching of unknown character instances. The system scans a character instance from four different views to obtain its peripheral segment information. A string representation is designed for representing the peripheral information at each of the four views. This representation can be generalized to represent the variations in different instances of a character by using an inductive learning algorithm. A clustering algorithm is developed to group the learned representation of characters into clusters in a hierarchical tree structure. Finally, a two-stage recognition process based on the developed representation is described. Experimental results demonstrate that high recognition rates can be obtained using the developed method. © 1993.
Takuma Udagawa, Aashka Trivedi, et al.
EMNLP 2023
P.C. Yue, C.K. Wong
Journal of the ACM
Ronen Feldman, Martin Charles Golumbic
Ann. Math. Artif. Intell.
Ismail Akhalwaya, Shashanka Ubaru, et al.
ICLR 2024