--- dataset_info: features: - name: sample_id dtype: string - name: energy sequence: float32 length: 3384 - name: n_freqs dtype: int32 - name: n_dirs dtype: int32 - name: source dtype: string - name: station dtype: string - name: n_anchors dtype: int32 - name: anchors_json dtype: string - name: Hs dtype: float32 - name: Tp dtype: float32 - name: Dp dtype: float32 - name: total_energy dtype: float32 splits: - name: train num_examples: 37412 - name: validation num_examples: 15625 - name: test num_examples: 15411 license: cc-by-4.0 task_categories: - image-to-image tags: - oceanography - wave-spectrum - compression - diffusion-model --- # ATLAS-WDS: Wave Directional Spectrum Dataset 海浪方向谱压缩回传训练数据集。 ## 数据格式 每条记录包含一个 **47×72 能量矩阵**(展平为 3384 维 float32 数组) 及对应的 **斜高斯锚点参数**。 ## 快速加载 ```python from datasets import load_dataset import numpy as np, json ds = load_dataset("wuff-mann/ATLAS-WDS", split="train", streaming=True) for sample in ds: # 还原能量矩阵 energy = np.array(sample["energy"], dtype=np.float32).reshape( sample["n_freqs"], sample["n_dirs"]) # (47, 72) # 锚点参数 anchors = json.loads(sample["anchors_json"]) # 物理参数 Hs, Tp, Dp = sample["Hs"], sample["Tp"], sample["Dp"] ``` ## 三阶段训练使用 ```python # Stage 1: cLDM 预训练 — 只用能量矩阵 for sample in ds: matrix = np.array(sample["energy"]).reshape(47, 72) # Stage 2: Swin 编码器 — 矩阵 + 锚点 for sample in ds: matrix = np.array(sample["energy"]).reshape(47, 72) anchors = json.loads(sample["anchors_json"]) # Stage 3: 端到端对齐 — 仅真实数据 ds_real = ds.filter(lambda x: x["source"] != "synthetic") ```