首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >GENERATIVE SCATTERNET HYBRID DEEP LEARNING (G-SHDL) NETWORK WITH STRUCTURAL PRIORS FOR SEMANTIC IMAGE SEGMENTATION
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GENERATIVE SCATTERNET HYBRID DEEP LEARNING (G-SHDL) NETWORK WITH STRUCTURAL PRIORS FOR SEMANTIC IMAGE SEGMENTATION

机译:具有语义图像分割的结构前导者的生成散射网混合深度学习(G-SHDL)网络

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This paper proposes a generative ScatterNet hybrid deep learning (G-SHDL) network for semantic image segmentation. The proposed generative architecture is able to train rapidly from relatively small labeled datasets using the introduced structural priors. In addition, the number of filters in each layer of the architecture is optimized resulting in a computationally efficient architecture. The G-SHDL network produces state-of-the-art classification performance against unsupervised and semi-supervised learning on two image datasets. Advantages of the G-SHDL network over supervised methods are demonstrated with experiments performed on training datasets of reduced size.
机译:本文提出了一种用于语义图像分割的生成散射混合深度学习(G-SHDL)网络。所提出的生成架构能够使用引入的结构前导者从相对较小的标记数据集迅速训练。另外,架构中的每层的过滤器的数量被优化,从而产生了计算有效的架构。 G-SHDL网络在两个图像数据集上产生针对无监督和半监督学习的最先进的分类性能。 G-SHDL网络通过在训练数据集减少尺寸减小的实验中进行了对监督方法的优点。

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