SOTAVerified

Instance Segmentation

Instance Segmentation is a computer vision task that involves identifying and separating individual objects within an image, including detecting the boundaries of each object and assigning a unique label to each object. The goal of instance segmentation is to produce a pixel-wise segmentation map of the image, where each pixel is assigned to a specific object instance.

Image Credit: Deep Occlusion-Aware Instance Segmentation with Overlapping BiLayers, CVPR'21

Papers

Showing 13761400 of 2262 papers

TitleStatusHype
Learning Multiscale Consistency for Self-supervised Electron Microscopy Instance Segmentation0
Learning Degradation-Independent Representations for Camera ISP Pipelines0
Learning Nuclei Representations with Masked Image Modelling0
Learning Object Placement by Inpainting for Compositional Data Augmentation0
Learning Segmentation Masks with the Independence Prior0
Learning Shape-Aware Embedding for Scene Text Detection0
Learning Stixel-based Instance Segmentation0
Learning to Better Segment Objects from Unseen Classes with Unlabeled Videos0
Learning to Complete Object Shapes for Object-level Mapping in Dynamic Scenes0
Learning to decompose for object detection and instance segmentation0
Learning to Detect Every Thing in an Open World0
Learning to Fuse Things and Stuff0
Learning to Infer Kinematic Hierarchies for Novel Object Instances0
Learning to Optimally Segment Point Clouds0
Learning to Track Any Object0
Learning to Track Instances without Video Annotations0
Learning Vector Quantized Shape Code for Amodal Blastomere Instance Segmentation0
Learning Video Instance Segmentation with Recurrent Graph Neural Networks0
Learning with Free Object Segments for Long-Tailed Instance Segmentation0
Less than Few: Self-Shot Video Instance Segmentation0
LevelSet R-CNN: A Deep Variational Method for Instance Segmentation0
LevelSet R-CNN: A Deep Variational Method for Instance Segmentation0
Leverage Cross-Attention for End-to-End Open-Vocabulary Panoptic Reconstruction0
Leveraging Multimodal-LLMs Assisted by Instance Segmentation for Intelligent Traffic Monitoring0
Leveraging multiple datasets for deep leaf counting0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1InternImage-HAP5080.8Unverified
2ResNeSt-200 (multi-scale)AP5070.2Unverified
3CenterMask + VoVNetV2-99 (multi-scale)AP5066.2Unverified
4CenterMask + VoVNetV2-57 (single-scale)AP5060.8Unverified
5Co-DETRmask AP57.1Unverified
6CBNetV2 (EVA02, single-scale)mask AP56.1Unverified
7ISDA (ResNet-50)APL55.7Unverified
8EVAmask AP55.5Unverified
9FD-SwinV2-Gmask AP55.4Unverified
10Mask Frozen-DETRmask AP55.3Unverified
#ModelMetricClaimedVerifiedStatus
1InternImage-BGFLOPs501Unverified
2Co-DETRmask AP56.6Unverified
3ViT-CoMer-L (Mask RCNN, DINOv2)mask AP55.9Unverified
4InternImage-Hmask AP55.4Unverified
5EVAmask AP55Unverified
6Mask Frozen-DETRmask AP54.9Unverified
7MasK DINO (SwinL, multi-scale)mask AP54.5Unverified
8ViT-Adapter-L (HTC++, BEiTv2, O365, multi-scale)mask AP54.2Unverified
9GLEE-Promask AP54.2Unverified
10SwinV2-G (HTC++)mask AP53.7Unverified