Publication | Open Access
Fully Convolutional Multi-Class Multiple Instance Learning
267
Citations
9
References
2014
Year
Instance-based LearningMultiple Instance LearningMachine VisionMachine LearningData ScienceImage AnalysisPattern RecognitionObject DetectionObject RecognitionEngineeringFeature LearningConvolutional Neural NetworkSemantic SegmentationComputer ScienceDeep LearningSemi-supervised LearningConvolutional NetworkComputer Vision
Multiple instance learning (MIL) can reduce the need for costly annotation in tasks such as semantic segmentation by weakening the required degree of supervision. We propose a novel MIL formulation of multi-class semantic segmentation learning by a fully convolutional network. In this setting, we seek to learn a semantic segmentation model from just weak image-level labels. The model is trained end-to-end to jointly optimize the representation while disambiguating the pixel-image label assignment. Fully convolutional training accepts inputs of any size, does not need object proposal pre-processing, and offers a pixelwise loss map for selecting latent instances. Our multi-class MIL loss exploits the further supervision given by images with multiple labels. We evaluate this approach through preliminary experiments on the PASCAL VOC segmentation challenge.
| Year | Citations | |
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2014 | 75.4K | |
2014 | 31.2K | |
2009 | 10K | |
2012 | 8.9K | |
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2002 | 1.4K | |
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2014 | 244 | |
2013 | 17 |
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