End-to-End Text Recognition with Hybrid HMM Maxout Models
About
The problem of detecting and recognizing text in natural scenes has proved to be more challenging than its counterpart in documents, with most of the previous work focusing on a single part of the problem. In this work, we propose new solutions to the character and word recognition problems and then show how to combine these solutions in an end-to-end text-recognition system. We do so by leveraging the recently introduced Maxout networks along with hybrid HMM models that have proven useful for voice recognition. Using these elements, we build a tunable and highly accurate recognition system that beats state-of-the-art results on all the sub-problems for both the ICDAR 2003 and SVT benchmark datasets.
Ouais Alsharif, Joelle Pineau• 2013
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Scene Text Recognition | SVT (test) | Word Accuracy74.3 | 289 | |
| Text Recognition | Street View Text (SVT) | Accuracy74.3 | 80 | |
| Scene Text Recognition | IC03 | Accuracy93.1 | 67 | |
| Scene Text Recognition | SVT | -- | 67 | |
| Scene Text Recognition | IC 2003 (test) | Word Accuracy93.1 | 38 | |
| Text Recognition | ICDAR 2003 | Accuracy93.1 | 19 | |
| End-to-End Text Spotting | ICDAR 2003 (test) | F-measure77 | 17 | |
| Scene Text Recognition | ICDAR 50-word lexicon 2003 (test) | Accuracy93.1 | 16 | |
| Scene Text Recognition | IC 03 | Accuracy (Full Lexicon)88.6 | 15 | |
| Scene Text Recognition | Street View Text 50-word lexicon (test) | Accuracy0.743 | 15 |
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