A CNN-based segmentation model for segmenting foreground by a probability map

Kunming Luo, Fanman Meng, Q. Wu, W. Shi, Lili Guo
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引用次数: 2

Abstract

This paper proposes a CNN-based segmentation model to segment foreground from an image and a prior probability map. Our model is constructed based on the FCN model that we simply replace the original RGB-based three channel input layer by a four channel, i.e., RGB and prior probability map. We then train the model by constructing various image, prior probability maps and the groundtruths from the PASCAL VOC dataset, and finally obtain a CNN-based foreground segmentation model that is suitable for general images. Our proposed method is motivated by the observation that the classical graphcut algorithm using GMM for modeling the priors can not capture the semantic segmentation from the prior probability, and thus leads to low segmentation performance. Furthermore, the efficient FCN segmentation model is for specific objects rather than general objects. We therefore improve the graph-cut like foreground segmentation by extending FCN segmentation model. We verify the proposed model by various prior probability maps such as artifical maps, saliency maps, and discriminative maps. The ICoseg dataset that is different from the PASCAL Voc dataset is used for the verification. Experimental results demonstrates the fact that our method obviously outperforms the graphcut algorithms and FCN models.
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基于cnn的前景概率图分割模型
本文提出了一种基于cnn的图像前景分割模型和先验概率图。我们的模型是基于FCN模型构建的,我们简单地将原来基于RGB的三通道输入层替换为四通道,即RGB和先验概率图。然后,我们通过构造各种图像、先验概率图和PASCAL VOC数据集的groundtruth来训练模型,最终得到一个适用于一般图像的基于cnn的前景分割模型。我们提出的方法是基于观察到经典的使用GMM建模先验的图割算法不能从先验概率中捕获语义分割,从而导致分割性能较低的问题。此外,高效的FCN分割模型是针对特定对象而不是一般对象的。因此,我们通过扩展FCN分割模型来改进类图切前景分割。我们通过各种先验概率图,如人工图、显著图和判别图来验证所提出的模型。使用与PASCAL Voc数据集不同的ICoseg数据集进行验证。实验结果表明,我们的方法明显优于图割算法和FCN模型。
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