Publication | Closed Access
High Quality Entity Segmentation
31
Citations
43
References
2023
Year
Unknown Venue
Full ImageScene AnalysisEngineeringMachine LearningText MiningNatural Language ProcessingImage AnalysisInformation RetrievalData ScienceData MiningPattern RecognitionText SegmentationImage EditingNamed-entity RecognitionVideo TransformerSynthetic Image GenerationMachine VisionEntity DisambiguationKnowledge DiscoveryVision Language ModelComputer ScienceDeep LearningMask PredictionComputer VisionScene Understanding
Dense image segmentation tasks (e.g., semantic, panoptic) are useful for image editing, but existing methods can hardly generalize well in an in-the-wild setting where there are unrestricted image domains, classes, and image resolution & quality variations. Motivated by these observations, we construct a new entity segmentation dataset, with a strong focus on high-quality dense segmentation in the wild. The dataset contains images spanning diverse image domains and entities, along with plentiful high-resolution images and high-quality mask annotations for training and testing. Given the high-quality and -resolution nature of the dataset, we propose CropFormer which is designed to tackle the intractability of instance-level segmentation on high-resolution images. It improves mask prediction by fusing high-res image crops that provides more fine-grained image details and the full image. CropFormer is the first query-based Transformer architecture that can effectively fuse mask predictions from multiple image views, by learning queries that effectively associate the same entities across the full image and its crop. With CropFormer, we achieve a significant AP gain of 1.9 on the challenging entity segmentation task. Furthermore, CropFormer consistently improves the accuracy of traditional segmentation tasks and datasets. The dataset and code are released at http://luqi.info/entityv2.github.io/.
| Year | Citations | |
|---|---|---|
Page 1
Page 1