Datasets:
license: mit
tags:
- target-plp
- power-lines
- polyline
- yolino
- cross-domain
- zero-shot
Target-PLP
Target-PLP is a cross-domain test-only dataset for zero-shot evaluation of aerial power-line detection models.
It contains 194 aerial frames annotated with polyline instance labels in YOLinO format. Models are trained on TTPLA and evaluated on Target-PLP without fine-tuning.
Compared to TTPLA, Target-PLP is more complex and challenging: denser wire layouts, more parallel instances per frame, greater scene variation, and a different imaging domain. Annotations are ordered polylines (vertex sequences along each wire), not axis-aligned boxes or masks.
Statistics
| Split | Images | Resolution | Purpose |
|---|---|---|---|
| test | 194 | 512×512 | zero-shot evaluation only |
No train or validation split is provided.
Preprocessing
- Source: CVAT XML exports from aerial video frames
- Resize: each frame is stretch-resized to 512×512 (LANCZOS); polyline vertices scaled with
sx = 512/W,sy = 512/H - No tiling / no dual-crop — one full frame per image
- Frames without valid polyline instances (fewer than 2 points) are skipped
Directory layout
images/test/*.png
labels/test/*.npy
Image and label files share the same stem, e.g. ANAR4318_frame_000000.png ↔ ANAR4318_frame_000000.npy.
Annotation format (polyline)
Each labels/test/<stem>.npy is a Python dict (format version 3):
{
"polylines": [ # one polyline per power-line instance
[[x1, y1], [x2, y2], ...], # instance 1: ordered vertices (pixels)
[[x1, y1], [x2, y2], ...], # instance 2
...
],
"instance_ids": [1, 2, ...], # unique ID per wire instance
"source_file": "<stem>",
"image_size_wh": [512, 512],
"format_version": 3
}
- Coordinates are in pixel space after the 512×512 resize
- Each polyline is an ordered sequence of 2D points along one wire
- Multiple parallel wires are separate instances with distinct
instance_ids
Loading example
import numpy as np
from PIL import Image
root = "./Target-PLP"
stem = "ANAR4318_frame_000000"
img = Image.open(f"{root}/images/test/{stem}.png") # 512×512 RGB
label = np.load(f"{root}/labels/test/{stem}.npy", allow_pickle=True).item()
polylines = label["polylines"] # list[list[[x, y]]]
instance_ids = label["instance_ids"] # list[int]
Download
hf download V8heart/Target-PLP \
--repo-type dataset \
--local-dir ./Target-PLP
Related
- TTPLA training benchmark: V8heart/yolino-ttpla-benchmark
- Code: V8heart/CAPSTONE