Publication | Open Access
SketchGNN: Semantic Sketch Segmentation with Graph Neural Networks
71
Citations
27
References
2021
Year
Geometric LearningConvolutional Neural NetworkGraph Neural NetworkMachine VisionMachine LearningImage AnalysisEngineeringPattern RecognitionFreehand Vector SketchesScene UnderstandingSemantic SegmentationSketch-based ModelingComputer ScienceSemantic Sketch SegmentationDeep LearningGraph ConvolutionImage SegmentationComputer Vision
We introduce SketchGNN , a convolutional graph neural network for semantic segmentation and labeling of freehand vector sketches. We treat an input stroke-based sketch as a graph with nodes representing the sampled points along input strokes and edges encoding the stroke structure information. To predict the per-node labels, our SketchGNN uses graph convolution and a static-dynamic branching network architecture to extract the features at three levels, i.e., point-level, stroke-level, and sketch-level. SketchGNN significantly improves the accuracy of the state-of-the-art methods for semantic sketch segmentation (by 11.2% in the pixel-based metric and 18.2% in the component-based metric over a large-scale challenging SPG dataset) and has magnitudes fewer parameters than both image-based and sequence-based methods.
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