Datasets:
image imagewidth (px) 596 774 | mask imagewidth (px) 596 774 | image_id stringlengths 1 6 |
|---|---|---|
0 | ||
015975 | ||
03425 | ||
06625 | ||
10275 | ||
1125 | ||
11400 | ||
13025 | ||
14825 | ||
15975 | ||
16475 | ||
1700 | ||
18925 | ||
20650 | ||
20900 | ||
21625 | ||
21875 | ||
2200 | ||
22375 | ||
23850 | ||
25025 | ||
25050 | ||
25075 | ||
25100 | ||
25125 | ||
25150 | ||
25175 | ||
25200 | ||
25225 | ||
25250 | ||
25275 | ||
25300 | ||
25325 | ||
25350 | ||
25375 | ||
25400 | ||
25425 | ||
25450 | ||
25475 | ||
25500 | ||
25525 | ||
25550 | ||
25575 | ||
25600 | ||
25625 | ||
25650 | ||
25675 | ||
25700 | ||
25725 | ||
25775 | ||
25800 | ||
25825 | ||
25850 | ||
25875 | ||
25900 | ||
25925 | ||
25950 | ||
25975 | ||
26000 | ||
26025 | ||
26050 | ||
26075 | ||
26100 | ||
26125 | ||
26150 | ||
26175 | ||
26200 | ||
26225 | ||
26250 | ||
26275 | ||
26300 | ||
26325 | ||
26350 | ||
26375 | ||
26400 | ||
26425 | ||
26450 | ||
26475 | ||
26500 | ||
26525 | ||
26550 | ||
26575 | ||
26600 | ||
26625 | ||
26650 | ||
26675 | ||
26700 | ||
26725 | ||
26750 | ||
26775 | ||
26800 | ||
26825 | ||
26925 | ||
26950 | ||
26975 | ||
2700 | ||
27000 | ||
27025 | ||
27050 | ||
27075 |
End of preview. Expand
in Data Studio
m2caiSeg - Surgical Scene Segmentation Dataset
Multi-class semantic segmentation dataset for surgical instrument and anatomy segmentation from the m2cai16 challenge.
Dataset Preview
Dataset Details
| Property | Value |
|---|---|
| Source | m2cai16 Challenge |
| Modality | Endoscopy (RGB) |
| Task | Multi-class Semantic Segmentation |
| Classes | 19 (1 background + 17 foreground + 1 unknown) |
| Train | 245 images |
| Test | 62 images |
| Image Format | JPEG (variable resolution) |
| Mask Format | PNG (RGB color-coded) |
Class Mapping (19 Classes)
This dataset uses preprocessed masks. The color-to-class mapping is:
| Class ID | Class Name | RGB Color |
|---|---|---|
| 0 | background | (255, 255, 255) |
| 1 | grasper | (0, 85, 170) |
| 2 | bipolar | (0, 85, 255) |
| 3 | hook | (0, 170, 85) |
| 4 | scissors | (0, 255, 85) |
| 5 | clipper | (0, 255, 170) |
| 6 | irrigator | (85, 0, 170) |
| 7 | specimen-bag | (85, 0, 255) |
| 8 | trocars | (170, 85, 85) |
| 9 | clip | (170, 170, 170) |
| 10 | liver | (85, 170, 0) |
| 11 | gall-bladder | (85, 170, 255) |
| 12 | fat | (85, 255, 0) |
| 13 | upperwall | (85, 255, 170) |
| 14 | artery | (170, 0, 255) |
| 15 | intestine | (255, 0, 255) |
| 16 | bile | (255, 255, 0) |
| 17 | blood | (255, 0, 0) |
| 18 | unknown | (0, 0, 0) |
The full mapping is also available as class_mapping.json.
Usage
from datasets import load_dataset
# Load from HuggingFace
dataset = load_dataset("Angelou0516/m2caiSeg")
# Access a sample
sample = dataset["train"][0]
image = sample["image"] # PIL Image (RGB)
mask = sample["mask"] # PIL Image (RGB color-coded mask)
image_id = sample["image_id"] # e.g., "0"
# Convert mask to class labels
import numpy as np
from json import load
with open("class_mapping.json") as f:
mapping = load(f)
mask_rgb = np.array(mask)
# Use color_to_class mapping to convert RGB -> class IDs
Reference
Jin, Y., et al. "Tool Detection and Operative Skill Assessment in Surgical Videos Using Region-Based Convolutional Neural Networks." IEEE Winter Conference on Applications of Computer Vision (WACV), 2018.
License
Research use only.
- Downloads last month
- 36