CVDec 15, 2019

Compressed DenseNet for Lightweight Character Recognition

arXiv:1912.07016v32 citations
Originality Incremental advance
AI Analysis

This work addresses efficiency bottlenecks in DenseNet models for lightweight character recognition, offering an incremental improvement for applications requiring reduced computational resources.

The paper tackles the high computational cost and large weight size of DenseNet-based models for character recognition by proposing a Lightweight Dense Block (LDB) that reduces these metrics to (1/L, 2/L) compared to original dense blocks, where L is the number of layers, and demonstrates promising recognition results with reduced weight size.

Convolutional Recurrent Neural Network (CRNN) is a popular network for recognizing texts in images. Advances like the variant of CRNN, such as Dense Convolutional Network with Connectionist Temporal Classification, has reduced the running time of the network, but exposing the inner computation cost and weight size of the convolutional networks as a bottleneck. Specifically, the DenseNet based models utilize the dense blocks as the core module, but the inner features are combined in the form of concatenation in dense blocks. As such, the number of channels of combined features delivered as the input of the layers close to the output and the relevant computational cost grows rapidly with the dense blocks getting deeper. This will severely bring heavy computational cost and big weight size, which restrict the depth of dense blocks. In this paper, we propose a compressed convolution block called Lightweight Dense Block (LDB). To reduce the computing cost and weight size, we re-define and re-design the way of combining internal features of the dense blocks. LDB is a convolutional block similarly as dense block, but it can reduce the computation cost and weight size to (1/L, 2/L), compared with original ones, where L is the number of layers in blocks. Moreover, LDB can be used to replace the original dense block in any DenseNet based models. Based on the LDBs, we propose a Compressed DenseNet (CDenseNet) for the lightweight character recognition. Extensive experiments demonstrate that CDenseNet can effectively reduce the weight size while delivering the promising recognition results.

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