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RG-SAN: Rule-GuidedSpatialAwarenessNetworkfor End-to-End3DReferringExpressionSegmentation

Neural Information Processing Systems

TGNN[24]introduce3D-RESby extending the bounding box annotations of ScanRefer [5] to masks by incorporating the instance masks from ScanNet and proposed a two-stage pipeline. Further, 3D-STMN [65] proposed an end-to-end method that matches the text and superpoints to get the 3D segmentation of the target object directly.



Learning Topology-Agnostic EEG Representations with Geometry-Aware Modeling

Neural Information Processing Systems

Large-scale pre-training has shown great potential to enhance models on downstream tasks in vision and language. Developing similar techniques for scalp electroencephalogram (EEG) is suitable since unlabelled data is plentiful.



Learning Conditioned Graph Structures for Interpretable Visual Question Answering

Will Norcliffe-Brown, Stathis Vafeias, Sarah Parisot

Neural Information Processing Systems

Understanding both the question and image, as well as modelling their interactions requires us to combine Computer Vision and NLP techniques. The problem is generally framed in terms of classification, such that the network learns to produce answers from a finite set of classes which facilitates training and evaluation.