TY - GEN
T1 - Zero-shot learning of 3d point cloud objects
AU - Cheraghian, Ali
AU - Rahman, Shafin
AU - Petersson, Lars
N1 - Publisher Copyright:
© 2019 MVA Organization.
PY - 2019/5
Y1 - 2019/5
N2 - Recent deep learning architectures can recognize instances of 3D point cloud objects of previously seen classes quite well. At the same time, current 3D depth camera technology allows generating/segmenting a large amount of 3D point cloud objects from an arbitrary scene, for which there is no previously seen training data. A challenge for a 3D point cloud recognition system is, then, to classify objects from new, unseen, classes. This issue can be resolved by adopting a zero-shot learning (ZSL) approach for 3D data, similar to the 2D image version of the same problem. ZSL attempts to classify unseen objects by comparing semantic information (attribute/word vector) of seen and unseen classes. Here, we adapt several recent 3D point cloud recognition systems to the ZSL setting with some changes to their architectures. To the best of our knowledge, this is the first attempt to classify unseen 3D point cloud objects in the ZSL setting. A standard protocol (which includes the choice of datasets and the seen/unseen split) to evaluate such systems is also proposed. Baseline performances are reported using the new protocol on the investigated models. This investigation throws a new challenge to the 3D point cloud recognition community that may instigate numerous future works.
AB - Recent deep learning architectures can recognize instances of 3D point cloud objects of previously seen classes quite well. At the same time, current 3D depth camera technology allows generating/segmenting a large amount of 3D point cloud objects from an arbitrary scene, for which there is no previously seen training data. A challenge for a 3D point cloud recognition system is, then, to classify objects from new, unseen, classes. This issue can be resolved by adopting a zero-shot learning (ZSL) approach for 3D data, similar to the 2D image version of the same problem. ZSL attempts to classify unseen objects by comparing semantic information (attribute/word vector) of seen and unseen classes. Here, we adapt several recent 3D point cloud recognition systems to the ZSL setting with some changes to their architectures. To the best of our knowledge, this is the first attempt to classify unseen 3D point cloud objects in the ZSL setting. A standard protocol (which includes the choice of datasets and the seen/unseen split) to evaluate such systems is also proposed. Baseline performances are reported using the new protocol on the investigated models. This investigation throws a new challenge to the 3D point cloud recognition community that may instigate numerous future works.
UR - http://www.scopus.com/inward/record.url?scp=85070478685&partnerID=8YFLogxK
U2 - 10.23919/MVA.2019.8758063
DO - 10.23919/MVA.2019.8758063
M3 - Conference contribution
T3 - Proceedings of the 16th International Conference on Machine Vision Applications, MVA 2019
BT - Proceedings of the 16th International Conference on Machine Vision Applications, MVA 2019
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 16th International Conference on Machine Vision Applications, MVA 2019
Y2 - 27 May 2019 through 31 May 2019
ER -