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Research data . Dataset . 2017

CAD 120 affordance dataset

Sawatzky, Johann; Srikantha, Abhilash; Gall, Juergen;
Open Access
Published: 07 Apr 2017
Publisher: Zenodo

% ============================================================================== % CAD 120 Affordance Dataset % Version 1.0 % ------------------------------------------------------------------------------ % If you use the dataset please cite: % % Johann Sawatzky, Abhilash Srikantha, Juergen Gall. % Weakly Supervised Affordance Detection. % IEEE Conference on Computer Vision and Pattern Recognition (CVPR'17) % % and % % H. S. Koppula and A. Saxena. % Physically grounded spatio-temporal object affordances. % European Conference on Computer Vision (ECCV'14) % % Any bugs or questions, please email sawatzky AT iai DOT uni-bonn DOT de. % ============================================================================== This is the CAD 120 Affordance Segmentation Dataset based on the Cornell Activity Dataset CAD 120 (see Content frames/*.png: RGB frames selected from Cornell Activity Dataset. To find out the location of the frame in the original videos, see video_info.txt. object_crop_images/*.png image crops taken from the selected frames and resized to 321*321. Each crop is a padded bounding box of an object the human interacts with in the video. Due to the padding, the crops may contain background and other objects. In each selected frame, each bounding box was processed. The bounding boxes are already given in the Cornell Activity Dataset. The 5-digit number gives the frame number, the second number gives the bounding box number within the frame. segmentation_mat/*.mat 321*321*6 segmentation masks for the image crops. Each channel corresponds to an affordance (openabe, cuttable, pourable, containable, supportable, holdable, in this order). All pixels belonging to a particular affordance are labeled 1 in the respective channel, otherwise 0. segmentation_png/*.png 321*321 png images, each containing the binary mask for one of the affordances. lists/*.txt Lists containing the train and test sets for two splits. The actor split ensures that train and test images stem from different videos with different actors while the object split ensures that train and test data have no (central) object classes in common. The train sets are additionally subdivided into 3 subsets A,B and C. For the actor split, the subsets stem from different videos. For the object split, each subset contains every third crop of the train set. crop_coordinate_info.txt Maps image crops to their coordinates in the frames. hpose_info.txt Maps frames to 2d human pose coordinates. Hand annotated by us. object_info.txt Maps image crops to the (central) object it contains. visible_affordance_info.txt Maps image crops to affordances visible in this crop   %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%55 The crops contain the following object classes: 1.table 2.kettle 3.plate 4.bottle 5.thermal cup 6.knife 7.medicine box 8.can 9.microwave 10.paper box 11.bowl 12.mug Affordances in our set: 1.openable 2.cuttable 3.pourable 4.containable 5.supportable 6.holdable Note that our object affordance labeling differs from the Cornell Activity Dataset: E.g. the cap of a pizza box is considered to be supportable.  


computer vision, affordances, attributes, semantic image segmentation, robotics, weakly supervised learning, convolutional neural network, anticipating human behavior, mapping on demand

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