metadata
task_categories:
- object-detection
pretty_name: COCO 2014 DensePose Relabeling with Body Parts
COCO 2014 DensePose Relabeling with Body Parts
This dataset is formatted for Ultralytics YOLO and is ready for training. IMPORTANT !!!! Update the paths in the yaml inside the dataset folder
Demo
Here is what inference looks like:
Based on:
Classes:
{
1: "Person",
2: "Torso",
3: "Hand",
4: "Foot",
5: "Upper Leg",
6: "Lower Leg",
7: "Upper Arm",
8: "Lower Arm",
9: "Head"
}
Dataset Structure:
dataset/
βββ images/
β βββ train/ # Training images (e.g., .jpg or .png)
β βββ val/ # Validation images
βββ labels/
β βββ train/ # Training labels (one .txt per image)
β βββ val/ # Validation labels
βββ data.yaml # YAML config file
In images/train threre are 13483 images which contain people, and also 1000 images which contain no people which are called backgrounds (they help avoid False Positives). In images/val there are 2215 images which contain people
In labels/train there are 13482 txt files which contain object detection information in the ultralytics yolo format. The 1000 background images have txt files (they don't need it) In labels/val there are 2215 txt files
Training Example:
from ultralytics import YOLO
import os
os.environ["CUDA_VISIBLE_DEVICES"] = "0"
model = YOLO("yolo11l.pt")
results = model.train(data="dataset/data.yaml", epochs=50, imgsz=640, device="0", batch=16, save=True)