--- base_model: Qwen/Qwen3-ASR-1.7B license: mit library_name: transformers pipeline_tag: automatic-speech-recognition language: - zh - en tags: - automatic-speech-recognition - taiwan-mandarin - traditional-chinese - code-switching - qwen3-asr - speech --- # TEA-ASR-1.1 · Taiwan Everyday Audio 🍵 **TEA-ASR is an open, drop-in speech-recognition model purpose-built for Taiwan Mandarin.** It turns real speech into natural **Traditional Chinese** with authentic **Taiwan vocabulary**, and it stays robust through the everyday **Mandarin–English code-switching** common in Taiwan. Adapted from the state-of-the-art **Qwen3-ASR** foundation and merged into a single self-contained checkpoint, TEA-ASR **loads and runs exactly like stock Qwen3-ASR** — no converters, no post-processing — while matching or surpassing both a dedicated Taiwan specialist and a large multilingual model on every public benchmark we evaluate. `TEA-ASR-1.1` is the **2B second-generation flagship (best accuracy)** and **improves on TEA-ASR-1 across every benchmark**. A companion **TEA-ASR-1.1-mini** shares the recipe at 780M — see [`JacobLinCool/TEA-ASR-1.1-mini`](https://huggingface.co/JacobLinCool/TEA-ASR-1.1-mini). > **Need a controllable numeral style?** The > [`TEA-ASR-1.1-fmt`](https://huggingface.co/JacobLinCool/TEA-ASR-1.1-fmt) variant adds a verified > numeral-convention dial (`digits` 108年 / `zh-num` 一百零八年) for formatting-sensitive, > Mandarin-dominant use, trading a small measured amount of dense-code-switch robustness. This > flagship stays the best pick for recognition quality and heavy code-switching. ## What's new in 1.1 - 🔀 **Code-switch leap** — ASCEND 10.59 → **9.60**, CSZS 10.98 → **10.94**; the English side of code-switch (ASCEND-en) improves most. - 🎯 **Better on everything** — CommonVoice, NTUML2021 lectures, and both code-switch sets all move down versus TEA-ASR-1, on the same protocol. - 🪶 Still a **single drop-in checkpoint**, `< 10 hours` of public training audio, no runtime post-processing. ## Key features - 🎯 **Built for Taiwan Mandarin** — Traditional script **and** Taiwan-style word choice, produced by the model itself. - 🔀 **Code-switch robust** — handles natural zh-en mixing instead of translating Mandarin into English. - 🧩 **Drop-in Qwen3-ASR compatible** — same loading and inference API as the base model; nothing else to install or call. - 🪶 **Lightweight adaptation** — a small decoder LoRA on a frozen audio encoder, trained on a few hours of public audio, then merged for deployment. ## Quick start ```bash pip install qwen-asr ``` ```python from qwen_asr import Qwen3ASRModel model = Qwen3ASRModel.from_pretrained("JacobLinCool/TEA-ASR-1.1") result = model.transcribe(audio="utterance.wav", language="Chinese")[0] print(result.text) # -> Traditional Chinese with Taiwan lexicon ``` Set `language="Chinese"` for Taiwan speech (recommended). You can also pass a `context=` string of hotwords (names, jargon) for contextual biasing, exactly as with the base Qwen3-ASR. ## Benchmark results Mixed Error Rate (MER%, **lower is better**), all numbers from a **single self-measured run under one protocol** (see [Evaluation](#evaluation)). Columns: the two TEA-ASR-1.1 models, the original (unadapted) **Qwen3-ASR** bases, and two references — **Breeze-ASR-25** (a Taiwan-specialist ASR) and **Whisper-large-v3**. **Bold = this model.** | Benchmark | TEA-ASR-1.1 | TEA-ASR-1.1-mini | Qwen3-ASR-1.7B | Qwen3-ASR-0.6B | Breeze-ASR-25 | Whisper-large-v3 | |---|---|---|---|---|---|---| | CommonVoice 19 (zh-TW) | **3.58** | 5.12 | 3.90 | 5.79 | 8.03 | 10.17 | | ASCEND (zh-en) | **9.60** | 11.20 | 10.57 | 12.54 | 17.53 | 19.61 | | CSZS (zh-en) | **10.94** | 12.51 | 11.03 | 16.03 | 12.18 | 23.24 | | NTUML2021 | **6.67** | 7.53 | 10.12 | 11.03 | 7.50 | 9.68 | **Generational improvement — TEA-ASR-1.1 vs TEA-ASR-1** (2B flagship, same protocol, lower is better): | Benchmark | TEA-ASR-1.1 | TEA-ASR-1 | Δ | |---|---|---|---| | CommonVoice 19 (zh-TW) | **3.58** | 3.64 | −0.06 | | ASCEND (zh-en) | **9.60** | 10.59 | −0.99 | | CSZS (zh-en) | **10.94** | 10.98 | −0.04 | | NTUML2021 | **6.67** | 6.80 | −0.13 | **How to read this.** **TEA-ASR-1.1** is the flagship model on this page and posts the best error rate on every benchmark in the suite — ahead of the Taiwan-specialist Breeze-ASR-25, far ahead of Whisper-large-v3, and below its own predecessor TEA-ASR-1 on all four sets. **TEA-ASR-1.1-mini** delivers most of that quality at well under half the parameters (780M vs 2B). The metric **folds away script differences** (see Evaluation), so it does *not* reflect the decisive practical change: TEA-ASR emits **Traditional script and Taiwan vocabulary natively**, whereas the base produces Simplified script. ## Evaluation - **Metric — Mixed Error Rate (MER).** Character Error Rate for Chinese and Word Error Rate for the English tokens, computed jointly per utterance and micro-averaged. - **Content fold (applied uniformly to every dataset and every system).** Before scoring, both the reference and the hypothesis are normalized to a common form — **converted to Simplified Chinese with OpenCC (`t2s`)**, lowercased, and stripped of punctuation. This isolates *recognition* from *script style*, so a Simplified-output model and a Traditional-output model (TEA-ASR) are compared fairly on content. (TEA-ASR's actual output is Traditional; the fold is only for scoring.) - **Decoding.** TEA-ASR and Qwen3-ASR are decoded with `language=Chinese`; Whisper-large-v3 and Breeze-ASR-25 use their own automatic language detection. All systems are scored with the **same code on the same public splits**; we do not import numbers reported elsewhere. | Dataset | What it tests | Eval split (n) | |---|---|---| | **CommonVoice 19 (zh-TW)** | Read Taiwan-Mandarin speech | full test (5013) | | **ASCEND** | Spontaneous Mandarin–English code-switch conversation | full test (1315) | | **CSZS (zh-en)** | Zero-resource code-switch benchmark | full test (3176) | | **NTUML2021** | Mandarin lecture speech (university ML course) | test[:2000] | - **No train/test leakage.** Fine-tuning used **only** the *training* pools, disjoint from every evaluation split: the NTUML2021 *train* split, the ASCEND *train* split, and a CommonVoice slice drawn from `validated_without_test` (CommonVoice's official non-test pool, disjoint from its *test* split). Evaluation therefore runs on the **full, untouched** CommonVoice / ASCEND / NTUML2021 *test* splits; CSZS is a separate dataset not used in training at all. Every number above is leak-free. ## How it was built - **Base** `Qwen/Qwen3-ASR-1.7B` (AuT audio encoder + Qwen3 decoder). - **Adaptation**: a rank-16 **decoder LoRA** (plus a low-LR encoder LoRA) trained on **under 10 hours of public audio** (CommonVoice zh-TW, ASCEND, NTUML2021, and [TaiMECS](https://huggingface.co/datasets/JacobLinCool/TaiMECS)), with general + code-switch **replay** to preserve the base model's broad and bilingual ability. The 1.1 recipe adds error-analysis-driven targeted supplements and English-preservation training so dense code-switch is *transcribed*, not translated. - **Localization**: Traditional-script + Taiwan-lexicon output is rendered through the model's **own tokenizer** (the surface mapping is baked once at build time); there is **no post-processing at inference** — the Traditional output comes straight from the model's own tokenizer decode. - **Packaging**: the adapter is **merged** into the base and the localized tokenizer is shipped with it, so the release is a single drop-in checkpoint that loads like stock Qwen3-ASR (decode verified bit-exact on 152k+ sequences). - **Decoding tip**: pass `language="Chinese"` for Taiwan speech; this also prevents translation-style outputs on dense code-switch. ## Limitations - **Scope**: validated on the Qwen3-ASR family (0.6B and 1.7B); the released models load via the `qwen-asr` package, exactly like the base. - **Compact model trade-off**: the 780M TEA-ASR-1.1-mini trails the 2B flagship on the hardest code-switch sets; for heavy Mandarin–English mixing prefer TEA-ASR-1.1. ## Acknowledgements - Base model: [Qwen3-ASR](https://huggingface.co/Qwen/Qwen3-ASR-1.7B) by Alibaba Cloud (Apache-2.0; underlying weights remain subject to the Apache-2.0 license and its attribution/NOTICE terms). - [TaiMECS](https://huggingface.co/datasets/JacobLinCool/TaiMECS) (CC-BY-4.0). - Benchmarks: Common Voice (Mozilla), ASCEND (CAiRE), CSZS, NTU ML2021. ## Citation ```bibtex @misc{teaasr2026, title = {Tokenizer-First Adaptation of Mandarin ASR to Taiwan Mandarin}, author = {TEA-ASR contributors}, year = {2026}, note = {TEA-ASR (Taiwan Everyday Audio); adapted from Qwen3-ASR} } ``` The TEA-ASR adaptation and this checkpoint are released under the **MIT License**.