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Multi-scale Patch Aggregation (MPA) for Simultaneous Detection and Segmentation

机译:多尺度补丁聚合(MPA)用于同时检测和分段

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Aiming at simultaneous detection and segmentation (SD-S), we propose a proposal-free framework, which detect and segment object instances via mid-level patches. We design a unified trainable network on patches, which is followed by a fast and effective patch aggregation algorithm to infer object instances. Our method benefits from end-to-end training. Without object proposal generation, computation time can also be reduced. In experiments, our method yields results 62.1% and 61.8% in terms of mAPr on VOC2012 segmentation val and VOC2012 SDS val, which are state-of-the-art at the time of submission. We also report results on Microsoft COCO test-std/test-dev dataset in this paper.
机译:针对同时检测和分段(SD-S),我们提出了一个无提案框架,该框架可通过中级补丁检测和分段对象实例。我们在补丁上设计了一个统一的可训练网络,然后是快速有效的补丁聚合算法来推断对象实例。我们的方法得益于端到端培训。如果没有生成对象建议书,则还可以减少计算时间。在实验中,我们的方法在VOC2012分割值和VOC2012 SDS值上的mAPr方面的结果分别为62.1%和61.8%,这是提交时的最新技术。我们还将在本文中报告有关Microsoft COCO test-std / test-dev数据集的结果。

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