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MRN: Multiplexed Routing Network for Incremental Multilingual Text Recognition

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arxiv 2305.14758 v3 pith:HTDBWJP7 submitted 2023-05-24 cs.CV

MRN: Multiplexed Routing Network for Incremental Multilingual Text Recognition

classification cs.CV
keywords dataincrementallanguagesdifferentdistributionimltrissuelanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multilingual text recognition (MLTR) systems typically focus on a fixed set of languages, which makes it difficult to handle newly added languages or adapt to ever-changing data distribution. In this paper, we propose the Incremental MLTR (IMLTR) task in the context of incremental learning (IL), where different languages are introduced in batches. IMLTR is particularly challenging due to rehearsal-imbalance, which refers to the uneven distribution of sample characters in the rehearsal set, used to retain a small amount of old data as past memories. To address this issue, we propose a Multiplexed Routing Network (MRN). MRN trains a recognizer for each language that is currently seen. Subsequently, a language domain predictor is learned based on the rehearsal set to weigh the recognizers. Since the recognizers are derived from the original data, MRN effectively reduces the reliance on older data and better fights against catastrophic forgetting, the core issue in IL. We extensively evaluate MRN on MLT17 and MLT19 datasets. It outperforms existing general-purpose IL methods by large margins, with average accuracy improvements ranging from 10.3% to 35.8% under different settings. Code is available at https://github.com/simplify23/MRN.

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