DropRegion Training of Inception Font Network for High-Performance Chinese Font Recognition
This addresses the challenge of sparse labeled samples and structural complexity in Chinese font recognition, representing an incremental improvement.
The paper tackles Chinese font recognition by proposing DropRegion to generate stochastic variant font samples and an inception font network with adaptive elastic meshing, achieving high performance as confirmed by experiments.
Chinese font recognition (CFR) has gained significant attention in recent years. However, due to the sparsity of labeled font samples and the structural complexity of Chinese characters, CFR is still a challenging task. In this paper, a DropRegion method is proposed to generate a large number of stochastic variant font samples whose local regions are selectively disrupted and an inception font network (IFN) with two additional convolutional neural network (CNN) structure elements, i.e., a cascaded cross-channel parametric pooling (CCCP) and global average pooling, is designed. Because the distribution of strokes in a font image is non-stationary, an elastic meshing technique that adaptively constructs a set of local regions with equalized information is developed. Thus, DropRegion is seamlessly embedded in the IFN, which enables end-to-end training; the proposed DropRegion-IFN can be used for high performance CFR. Experimental results have confirmed the effectiveness of our new approach for CFR.