Model card
SAFL.
UnknownunknownUnknown paramsUnknown
Imported from Papers With Code
§ 01 · Benchmarks
Every benchmark SAFL has a recorded score for.
| # | Benchmark | Area · Task | Metric | Value | Rank | Date | Source |
|---|---|---|---|---|---|---|---|
| 01 | icdar-2003 | Computer Vision · Scene Text Recognition | accuracy | 95.0% | #4 | 2022-01-01 | source ↗ |
| 02 | icdar2015 | Computer Vision · Optical Character Recognition | accuracy | 77.5% | #23 | 2022-01-01 | source ↗ |
| 03 | icdar2013 | Computer Vision · Optical Character Recognition | accuracy | 92.8% | #26 | 2022-01-01 | source ↗ |
| 04 | svt | Computer Vision · Scene Text Recognition | accuracy | 88.6% | #31 | 2022-01-01 | source ↗ |
Rank column shows this model’s position vs all other models scored on the same benchmark + metric (competitors after the slash). #1 in red means current SOTA. Sorted by rank, then newest result.
§ 03 · Papers
1 paper with results for SAFL.
- 2022-01-01· Computer Vision· 4 results
SAFL: A Self-Attention Scene Text Recognizer with Focal Loss
§ 04 · Related models
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§ 05 · Sources & freshness
Where these numbers come from.
papers-with-code
4
results
4 of 4 rows marked verified.