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Cross-connected Networks for Multi-task Learning of Detection and Segmentation

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arxiv 1805.05569 v1 pith:FOH52W3C submitted 2018-05-15 cs.CV

Cross-connected Networks for Multi-task Learning of Detection and Segmentation

classification cs.CV
keywords datasetsdetectionlearningmulti-tasksegmentationcnnsdatasetarchitecture
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-task learning improves generalization performance by sharing knowledge among related tasks. Existing models are for task combinations annotated on the same dataset, while there are cases where multiple datasets are available for each task. How to utilize knowledge of successful single-task CNNs that are trained on each dataset has been explored less than multi-task learning with a single dataset. We propose a cross-connected CNN, a new architecture that connects single-task CNNs through convolutional layers, which transfer useful information for the counterpart. We evaluated our proposed architecture on a combination of detection and segmentation using two datasets. Experiments on pedestrians show our CNN achieved a higher detection performance compared to baseline CNNs, while maintaining high quality for segmentation. It is the first known attempt to tackle multi-task learning with different training datasets between detection and segmentation. Experiments with wild birds demonstrate how our CNN learns general representations from limited datasets.

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