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Superpixels

Superpixel techniques segment an image into regions based on similarity measures that utilize perceptual features, effectively grouping pixels that appear similar. The motivation behind this approach is to generate regions that provide meaningful descriptions while significantly reducing the data volume compared to using every individual pixel. By decreasing the number of primitives, these techniques reduce redundancy and simplify the complexity of recognition tasks. Superpixels replace the rigid structure of individual pixels with delineated regions that preserve meaningful content in the image, thereby aiding the interpretation of the scene’s structure and simplifying subsequent processing tasks. Generally, superpixel techniques rely on measures that evaluate color similarities and the shapes of regions, incorporating edges or significant changes in intensity to define these regions.

Papers

Showing 3140 of 371 papers

TitleStatusHype
P²Net: Patch-match and Plane-regularization for Unsupervised Indoor Depth EstimationCode1
Self-Supervision with Superpixels: Training Few-shot Medical Image Segmentation without AnnotationCode1
P^2Net: Patch-match and Plane-regularization for Unsupervised Indoor Depth EstimationCode1
Superpixel Segmentation using Dynamic and Iterative Spanning ForestCode1
Affinity Fusion Graph-based Framework for Natural Image SegmentationCode1
Super-BPD: Super Boundary-to-Pixel Direction for Fast Image SegmentationCode1
Superpixel Segmentation with Fully Convolutional NetworksCode1
Superpixel Segmentation via Convolutional Neural Networks with Regularized Information MaximizationCode1
Superpixel Image Classification with Graph Attention NetworksCode1
RGB-T Image Saliency Detection via Collaborative Graph LearningCode1
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