OXFORD-IIIT PET Dataset ----------------------- Omkar M Parkhi, Andrea Vedaldi, Andrew Zisserman and C. V. Jawahar We have created a 37 category pet dataset with roughly 200 images for each class. The images have a large variations in scale, pose and lighting. All images have an associated ground truth annotation of breed, head ROI, and pixel level trimap segmentation. Contents: -------- trimaps/ Trimap annotations for every image in the dataset Pixel Annotations: 1: Foreground 2:Background 3: Not classified xmls/ Head bounding box annotations in PASCAL VOC Format list.txt Combined list of all images in the dataset Each entry in the file is of following nature: Image CLASS-ID SPECIES BREED ID ID: 1:37 Class ids SPECIES: 1:Cat 2:Dog BREED ID: 1-25:Cat 1:12:Dog All images with 1st letter as captial are cat images while images with small first letter are dog images. trainval.txt Files describing splits used in the paper.However, test.txt you are encouraged to try random splits. Support: ------- For any queries contact, Omkar Parkhi: omkar@robots.ox.ac.uk References: ---------- [1] O. M. Parkhi, A. Vedaldi, A. Zisserman, C. V. Jawahar Cats and Dogs IEEE Conference on Computer Vision and Pattern Recognition, 2012 Note: ---- Dataset is made available for research purposes only. Use of these images must respect the corresponding terms of use of original websites from which they are taken. See [1] for list of websites.