-
ATR dataset
Human parsing has recently attracted a huge amount of interests and achieved great progress with the advance of deep convolutional neural networks and large-scale datasets. Most... -
Look-into-Person (LIP) dataset
The Look-into-Person (LIP) dataset is a dataset for human parsing and contains images of single persons with varying clothing appearances and diverse viewpoints. -
Fashionista dataset
The Fashionista dataset is a dataset for human parsing and contains images of single persons with upright position. -
Multiple Human Parsing (MHP) dataset
The Multiple Human Parsing (MHP) dataset is a large-scale dataset for multi-human parsing in the wild. It contains multiple persons captured in real-world scenes with... -
Gait3D-Parsing
The Gait3D-Parsing dataset is a large-scale parsing-based gait recognition dataset in the wild. It is an extension of the Gait3D dataset, which is collected from an in-the-wild... -
PASCAL-Context Dataset
The PASCAL-Context dataset comprises 4,998 images for training and 5,105 images for testing. This dataset offers dense labels for four tasks including semantic segmentation,... -
PASCAL-Person-Part
Human parsing aims to segment a human image into multiple semantic parts. It is a pixel-level prediction task which requires to understand human images in both the global level...