Pavoni G., Corsini M., Ponchio F., Muntoni A., Cignoni P.
Computer Vision and Pattern Recognition (cs.CV) FOS: Computer and information sciences Artificial Intelligence (cs.AI) Artificial Intelligence Computer Vision and Pattern Recognition Computer Science - Human-Computer Interaction Human-Computer Interaction (cs.HC) I.2.1 I.3.6 Human-Computer Interaction Computer Science - Artificial Intelligence Computer Science - Computer Vision and Pattern Recognition
Fully automatic semantic segmentation of highly specific semantic classes and complex shapes may not meet the accuracy standards demanded by scientists. In such cases, human-centered AI solutions, able to assist operators while preserving human control over complex tasks, are a good trade-off to speed up image labeling while maintaining high accuracy levels. TagLab is an open-source AI-assisted software for annotating large orthoimages which takes advantage of different degrees of automation; it speeds up image annotation from scratch through assisted tools, creates custom fully automatic semantic segmentation models, and, finally, allows the quick edits of automatic predictions. Since the orthoimages analysis applies to several scientific disciplines, TagLab has been designed with a flexible labeling pipeline. We report our results in two different scenarios, marine ecology, and architectural heritage.
Source: Human Centered AI Workshop at NeurIPS 2021 - Thirty-fifth Conference on Neural Information Processing Systems, Online event, 13/12/2021
@inproceedings{oai:it.cnr:prodotti:481506, title = {TagLab: A human-centric AI system for interactive semantic segmentation}, author = {Pavoni G. and Corsini M. and Ponchio F. and Muntoni A. and Cignoni P.}, doi = {10.48550/arxiv.2112.12702}, booktitle = {Human Centered AI Workshop at NeurIPS 2021 - Thirty-fifth Conference on Neural Information Processing Systems, Online event, 13/12/2021}, year = {2021} }