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首页> 外文期刊>Journal of electronic imaging >Image semantic segmentation with finer edges and complete parts from bounding box annotations
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Image semantic segmentation with finer edges and complete parts from bounding box annotations

机译:具有更精细边缘和边界框注释中完整部分的图像语义分割

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摘要

Image semantic segmentation understands and parses the image scene from the pixel-level. We work on the weakly supervised image semantic segmentation method on bounding box annotations. Inspired by Roberts edge detection operator, we develop an edge gradient module, which includes the max-pooling layer and average-pooling layer to extract edge gradient features. We combine the pyramid pooling (PP) module extracting global features with the atrous spatial PP module building the relationships between nodes to form long-range context dependency module. It can strengthen the ties between various parts of the object, just like a simplified fully connected conditional random field. To obtain more accurate feedback from bounding box annotations, we design a random label transformation algorithm. Finally, we demonstrate the validity of our module on PASCAL VOC 2012 and MS-COCO datasets, and our whole model has achieved a better performance than other mainstream methods. (C) 2019 SPIE and IS&T
机译:图像语义分割从像素级别理解并解析图像场景。我们研究了在边界框注释上的弱监督图像语义分割方法。受罗伯茨边缘检测算子启发,我们开发了一个边缘梯度模块,其中包括最大池化层和平均池化层以提取边缘梯度特征。我们将提取全局特征的金字塔池(PP)模块与构建空间节点之间关系的无空间PP模块相结合,以形成远程上下文依赖模块。它可以增强对象各个部分之间的联系,就像简化的完全连接的条件随机字段一样。为了从边界框注释中获得更准确的反馈,我们设计了一种随机标签转换算法。最后,我们证明了我们的模块在PASCAL VOC 2012和MS-COCO数据集上的有效性,并且我们的整个模型取得了比其他主流方法更好的性能。 (C)2019 SPIE和IS&T

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