DRetHTR: Linear-Time Decoder-Only Retentive Network for Handwritten Text Recognition
Abstract
State-of-the-art handwritten text recognition (HTR) systems commonly use Transformers, whose growing key-value (KV) cache makes decoding slow and memory-intensive. We introduce DRetHTR, a decoder-only model built on Retentive Networks (RetNet). Compared to an equally sized decoder-only Transformer baseline, DRetHTR delivers 1.6-1.9x faster inference with 38-42% less memory usage, without loss of accuracy. By replacing softmax attention with softmax-free retention and injecting multi-scale sequential priors, DRetHTR avoids a growing KV cache: decoding is linear in output length in both time and memory. To recover the local-to-global inductive bias of attention, we propose layer-wise gamma scaling, which progressively enlarges the effective retention horizon in deeper layers. This encourages early layers to model short-range dependencies and later layers to capture broader context, mitigating the flexibility gap introduced by removing softmax. Consequently, DRetHTR achieves best reported test character error rates of 2.26% (IAM-A, en), 1.81% (RIMES, fr), and 3.46% (Bentham, en), and is competitive on READ-2016 (de) with 4.21%. This demonstrates that decoder-only RetNet enables Transformer-level HTR accuracy with substantially improved decoding speed and memory efficiency.
Cite
@article{arxiv.2602.17387,
title = {DRetHTR: Linear-Time Decoder-Only Retentive Network for Handwritten Text Recognition},
author = {Changhun Kim and Martin Mayr and Thomas Gorges and Fei Wu and Mathias Seuret and Andreas Maier and Vincent Christlein},
journal= {arXiv preprint arXiv:2602.17387},
year = {2026}
}
Comments
Submitted to Pattern Recognition, 11 pages + 2-page appendix, 7 figures, 12 tables