膨胀(度量空间)
残余物
人工智能
计算机科学
分割
特征(语言学)
模式识别(心理学)
计算机视觉
图像分割
图像分辨率
特征提取
图像(数学)
感受野
算法
数学
哲学
组合数学
语言学
作者
Fisher Yu,Vladlen Koltun,Thomas Funkhouser
出处
期刊:Computer Vision and Pattern Recognition
日期:2017-07-01
卷期号:: 636-644
被引量:1748
摘要
Convolutional networks for image classification progressively reduce resolution until the image is represented by tiny feature maps in which the spatial structure of the scene is no longer discernible. Such loss of spatial acuity can limit image classification accuracy and complicate the transfer of the model to downstream applications that require detailed scene understanding. These problems can be alleviated by dilation, which increases the resolution of output feature maps without reducing the receptive field of individual neurons. We show that dilated residual networks (DRNs) outperform their non-dilated counterparts in image classification without increasing the models depth or complexity. We then study gridding artifacts introduced by dilation, develop an approach to removing these artifacts (degridding), and show that this further increases the performance of DRNs. In addition, we show that the accuracy advantage of DRNs is further magnified in downstream applications such as object localization and semantic segmentation.
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