--- language: - zh - en license: cc-by-nc-4.0 task_categories: - automatic-speech-recognition tags: - code-switching dataset_info: config_names: - SECoMiCSC - DevCECoMiCSC --- # Robust Code-Switching ASR Benchmark ## Dataset Summary This dataset is a **processed and cleaned derivative** of the open-source MagicData corpus, specifically optimized for our project **Code-Switched ASR robustness** (e.g., Whisper fine-tuning). We addressed the "context fragmentation" issue in original long-form audio by applying a **Smart-Merge Strategy** (merging short segments into 5-15s chunks using ground-truth timestamps) and filtering out conversational fillers. ## Original Data Sources This dataset is derived from the following open-source datasets released by **MagicData Technology**: * **Training Subset:** Derived from **ASR-SECoMiCSC** * *Source:* [MagicData Open Source Community](https://magichub.com/datasets/chinese-english-code-mixing-conversational-speech-corpus/) * **Benchmark/Test Subset:** Derived from **ASR-DevCECoMiCSC** * *Source:* [MagicData Open Source Community](https://magichub.com/datasets/dev-set-of-chinese-english-code-mixing-conversational-speech-corpus/) *> Note: This repository contains processed audio chunks and metadata only. Please refer to the original links for full datasets and license details.* ## Processing Pipeline (Why this version?) 1. **Smart Segmentation:** Instead of random VAD cutting, we merged short utterances into **5s - 15s segments** based on speaker identity and time gaps. This provides better context for Transformer-based models. 2. **Noise Filtering:** Removed pure filler segments (e.g., "嗯", "啊", "[ENS]") to reduce hallucination during training. ## Usage ```python from datasets import load_dataset # 1. Load Training Data (SECoMiCSC) dataset_train = load_dataset("1uckyan/code-switch_chunks", data_dir="SECoMiCSC", split="train") # 2. Load Benchmark Test Set (DevCECoMiCSC) dataset_test = load_dataset("1uckyan/code-switch_chunks", data_dir="DevCECoMiCSC", split="train")