Dataset Preview
Full Screen
The full dataset viewer is not available (click to read why). Only showing a preview of the rows.
[Errno 13] Permission denied: '/tmp/hf-datasets-cache/medium/datasets/31382487118822-config-parquet-and-info-merve-SGinW-f7ee4cdb/downloads/d76f83818679039d5492a0481083123d57d5d4a03202ff1178bffb48932e4c47.incomplete'
Error code:   UnexpectedError

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

image
image
label
class label
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
0train
End of preview.

Dataset Card for Segmentation in the Wild

Dataset Description

Segmentation in the Wild (SegInW) is a computer vision challenge that aims to evaluate the transferability of pre-trained vision models. It proposes a new benchmark that assesses both the segmentation accuracy and transfer efficiency of models on a diverse set of downstream segmentation tasks. The challenge consists of 25 free, public segmentation datasets, crowd-sourced on roboflow.com, providing a wide range of visual data for model training and testing.

Composition

The SegInW challenge brings together 25 diverse segmentation datasets, offering a comprehensive evaluation of model performance across various scenarios. These datasets cover a broad range of visual content.

Data Instances

  • Images: Visual data in the form of images, depending on the dataset.
  • Annotations: Manual annotations specifying regions of interest or providing referring phrases for language-based segmentation.
  • Segmentation Masks: Pixel-level annotations that define the boundaries of objects or regions in the visual data.
  • Metadata: Additional information about the data, such as collection sources, dates, and any relevant pre-processing steps.

Data Splits Each folder has a train, train 10-shot and validation splits.

Dataset Creation The SegInW challenge is a community effort, with the 25 datasets crowd-sourced and contributed by different researchers and organizations. The diversity of sources ensures a wide range of visual data and evaluation scenarios. The datasets were labeled on roboflow.com as part of X-Decoder project.

Downloads last month
287