Publication | Closed Access
LayoutGMN: Neural Graph Matching for Structural Layout Similarity
23
Citations
36
References
2021
Year
Unknown Venue
Geometric LearningEngineeringMachine LearningStructural Pattern RecognitionNetwork AnalysisComputer-aided DesignTriplet NetworkGraph MatchingImage AnalysisData SciencePattern RecognitionStructural Layout SimilarityMachine VisionComputer ScienceImage SimilarityDeep LearningTriplet LossDeep Neural NetworkComputer VisionArchitectural DesignGraph TheoryScene UnderstandingGraph Neural NetworkScene Modeling
We present a deep neural network to predict structural similarity between 2D layouts by leveraging Graph Matching Networks (GMN). Our network, coined LayoutGMN, learns the layout metric via neural graph matching, using an attention-based GMN designed under a triplet network setting. To train our network, we utilize weak labels obtained by pixel-wise Intersection-over-Union (IoUs) to define the triplet loss. Importantly, LayoutGMN is built with a structural bias which can effectively compensate for the lack of structure awareness in IoUs. We demonstrate this on two prominent forms of layouts, viz., floorplans and UI designs, via retrieval experiments on large-scale datasets. In particular, retrieval results by our network better match human judgement of structural layout similarity compared to both IoUs and other baselines including a state-of-the-art method based on graph neural networks and image convolution. In addition, LayoutGMN is the first deep model to offer both metric learning of structural layout similarity and structural matching between layout elements.
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