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Weakly Supervised Semantic Segmentation using Constrained Multi-Image Model and Saliency Prior

机译:使用受限多图像模型和先验先验的弱监督语义分割

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Building a graph model use the whole training set and solved by graph cut based algorithm is a common method in weak supervision semantic segmentation task, such as Multi-Image Model (MIM). It has two disadvantages: one is the parameter number of model increased rapidly with the scale growth of training set, which limited applied to large-scale data. Another is lack of use structure information in image internal. To solve above problems, we proposed a Constrained Multi-Image Model (CMIM) that training model with a part of the training data which acquired by our entropy based algorithm. It's made up of some components and each is a smaller graph. So, The CMIM can parallel or serial training and weaken the memory limit. To utilize the context information, we bring the saliency of image to unary potential in energy function. At first, we segment images to superpixels and extract the semantic texton forest (STF) feature. Then construct a conditional random fields (CRF) in the superpixel set from selected images. The data potential learned from STF featrue and saliency of superpixels. Finally, the labeling of superpixels converted to CRF optimization problem which can efficiency solved by alpha expansion algorithm. Experiments on the MSRC21 dataset show that the CMIM algorithm achieves accuracy comparable with some previous influential weakly-supervised segmentation algorithms.
机译:构建图形模型使用整个训练集并由图形切割算法解决是一种缺乏监控语义分段任务的常见方法,例如多图像模型(MIM)。它有两个缺点:一个是模型的参数次数随着训练集的规模增长而迅速增加,其中有限地应用于大规模数据。另一个是在图像中缺乏使用结构信息。为了解决上述问题,我们提出了一个受到由我们的熵基算法获取的培训数据的一部分训练模型的受约束的多图像模型(CMIM)。它由某些组件组成,每个组件都是一个较小的图表。因此,CMIM可以平行或串行训练并削弱内存限制。为了利用上下文信息,我们将图像的显着性带到能量函数中的一元潜力。首先,我们将图像分段为SuperPixels并提取语义Texton林(STF)功能。然后在从所选图像中设置SuperPixel中的条件随机字段(CRF)。从STF Featrue和Superpixels的显着性了解到的数据潜力。最后,转换为CRF优化问题的超像素的标记,可以通过α扩展算法解决的效率。 MSRC21数据集上的实验表明,CMIM算法与一些以前的有影响力的虚线监督分割算法实现了准确性。

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