--- configs: - config_name: default data_files: - split: train path: data/train-* - split: validation path: data/validation-* - split: test path: data/test-* --- # OpenWhistle Detection Finetuning Expert-annotated whistle-type detection dataset for OpenWhistle. Each example is a fixed-length 0.5 s audio window labeled with the whistle types present in that window; background/no-whistle windows are represented by an all-zero target vector. ## Overview - Task: multi-label whistle-type detection on fixed-length audio windows - Target vector: `label`, with one binary decision per whistle type in the order `SW_Neo, SW_Luna, SW_Nikita, SW_Nana, SW_Yosefa, SW_Dana, NSW_1` - Background: no-whistle windows use an all-zero `label` vector - Convenience binary label: `binary_label`, derived from `label`, with values `noise` and `whistle` - Total rows: `5600` - Class balance: `400` examples per whistle type across 7 classes, plus `2800` background windows - Split: session-disjoint `train`/`validation`/`test` with ratios 0.70/0.15/0.15 ## Construction - Built from the expert-annotated OpenWhistle benchmark subset - Multi-label target: encode each whistle type present in the window in the fixed-length `label` vector - Binary target: derive `whistle` when at least one `label` dimension is active, otherwise `noise` - Session key: source `original_path` basename with audio extension removed - Split rule: exact MILP assignment of whole sessions - Balance rule: exact source-label targets per split ## Features - `audio`: audio clips stored with `decode=False` - `label`: multi-label whistle-type vector in order `SW_Neo, SW_Luna, SW_Nikita, SW_Nana, SW_Yosefa, SW_Dana, NSW_1` - `binary_label`: derived binary class label with values `noise` and `whistle` - `name`: original clip filename from the source dataset - `source_label`: original source label before deriving the binary label ## Rows By Split - `train`: `3920` rows - `validation`: `840` rows - `test`: `840` rows ## Binary Label Counts - `total`: `noise=2800, whistle=2800` - `train`: `noise=1960, whistle=1960` - `validation`: `noise=420, whistle=420` - `test`: `noise=420, whistle=420` ## Source Label Counts - `train`: `Dana=280, Luna=280, NSW_1=280, Nana=280, Neo=280, Nikita=280, Yosefa=280, noise=1960` - `validation`: `Dana=60, Luna=60, NSW_1=60, Nana=60, Neo=60, Nikita=60, Yosefa=60, noise=420` - `test`: `Dana=60, Luna=60, NSW_1=60, Nana=60, Neo=60, Nikita=60, Yosefa=60, noise=420` ## Session Leakage - Pairwise session overlap: `train__validation=0, train__test=0, validation__test=0` ## Example ```python from datasets import Audio, load_dataset dataset = load_dataset("OpenWhistleNeurIPS26/OpenWhistle-Detection-Finetuning") decoded_train = dataset["train"].cast_column("audio", Audio()) sample = decoded_train[0]