三维生成中的自适应多层次显著性网络

Zhongliang Tang
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引用次数: 0

摘要

许多具有编码器-解码器结构的cnn被广泛应用于有监督的三维体素生成。然而,它们的卷积编码器通常过于简单,导致卷积过程中一些局部特征的退化,因此使用简单的编码器很难从输入图像中提取出良好的特征表示。有些cnn在编码器上采用跳接层来减少退化,但是一般的跳接层如残差层的效果不够好,特别是在编码器中卷积层数量比较少的情况下。本文提出了一种新的自适应多层次显著性网络(AMSN)结构来减少局部特征的退化。AMSN的主要创新点是多层显著性卷积核(MSCK)和显著性融合层。与一般跳过连接层使用的核不同,MSCK是从多级显著特征映射中自适应学习的,而不是随机初始化。显著特征映射从编码器的多个层中采样。MSCK可以更容易地获取多层特征,因此我们利用MSCK在退化前从低层获取局部特征。然后,通过显著性融合层将获取的局部特征融合回编码器中,以减少退化。我们在ShapeNet和ModelNet40数据集上评估了我们的方法。结果表明,我们的AMSN性能优于相关工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Multi-Level Saliency Network in 3D Generation
Many CNNs with encoder-decoder structure are widely used in supervised 3D voxel generation. However, their convolutional encoders are usually too simple which causes some local features to degrade during convolution, so it is difficult to extract a good feature representation from an input image by using a simple encoder. Some CNNs apply skip-connection layer for the encoder to reduce the degradation, but general skip-connection layer such as residual layer is not good enough especially when the quantity of convolutional layers in the encoder is relatively small. In this paper, we propose a novel structure called adaptive multi-level saliency network (AMSN) to reduce the degradation of local features. The major innovations of AMSN are multi-level saliency convolution kernels (MSCK) and saliency fusion layer. Different from the kernels used in general skip-connection layer, MSCK are adaptively learned from multi-level salient feature maps rather than initialized randomly. The salient feature maps are sampled from multiple layers in the encoder. MSCK can acquire multi-level features more easily so that we utilize MSCK to acquire local features from low-level layer before the degradation. After that, the acquired local features are fused back into encoder through a saliency fusion layer to reduce the degradation. We evaluated our approach on the ShapeNet and ModelNet40 dataset. The results indicate that our AMSN performs better than related works.
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