Deep Dilated Convolutional Network for Material Recognition

Xiaoyue Jiang, Junna Du, B. Sun, Xiaoyi Feng
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引用次数: 4

Abstract

Material is actually one of the intrinsic features for objects, consequently material recognition plays an important role in image understanding. For the same material, it may have various shapes and appearances, but keeps the same physical characteristic, which brings great challenges for material recognition. Most recent material recognition methods are based on image patches, and cannot give accurate segmentation results for each specific material. In this paper, we propose a deep learning based method to do pixel level material segmentation for whole images directly. In classical convolutional network, the spacial size of features becomes smaller and smaller with the increasing of convolutional layers, which loses the details for pixel-wise segmentation. Therefore we propose to use dilated convolutional layers to keep the details of features. In addition, the dilated convolutional features are combined with traditional convolutional features to remove the artifacts that are brough by dilated convolution. In the experiments, the proposed dilated network showed its effectiveness on the popular MINC dataset and its extended version.
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材料识别的深度扩展卷积网络
材料实际上是物体的内在特征之一,因此材料识别在图像理解中起着重要的作用。对于同一种材料,它可能具有不同的形状和外观,但保持相同的物理特性,这给材料识别带来了很大的挑战。目前大多数的材料识别方法都是基于图像的小块,无法对每个特定的材料给出准确的分割结果。在本文中,我们提出了一种基于深度学习的方法,直接对整个图像进行像素级的材料分割。在经典的卷积网络中,随着卷积层数的增加,特征的空间大小会越来越小,从而在逐像素分割时失去了细节。因此,我们建议使用扩展卷积层来保留特征的细节。此外,将扩展卷积特征与传统卷积特征相结合,去除扩展卷积带来的伪影。在实验中,所提出的扩展网络在流行的MINC数据集及其扩展版本上显示了其有效性。
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