增采样
计算机科学
图像处理
人工智能
数字图像处理
编码器
解码方法
深度学习
计算机视觉
编码(内存)
模式识别(心理学)
图像(数学)
算法
操作系统
作者
Kyeongbo Kong,Junggi Lee,Woo‐Jin Song,Min-Sung Kang,Kyung Joon Kwon,Seong Gyun Kim
摘要
Abstract Nowadays, deep neural networks (DNNs) for image processing are becoming more complex; thus, reducing computational cost is increasingly important. This study highlights the construction of a DNN for real‐time image processing, training various image processing operators efficiently through multitask learning. For real‐time image processing, the proposed algorithm takes a joint upsampling approach through bilateral guided upsampling. For multitask learning, the overall network is based on an encoder‐decoder architecture, which consists of encoding, processing, and decoding components, in which the encoding and decoding components are shared by all the image processing operators. In the processing component, a semantic guidance map, which contains processing information for each image processing operator, is estimated using simple linear shifts of the shared deep features. Through these components, the proposed algorithm requires an increase of only 5% in the number of parameters to add another image processing operator and achieves faster and higher performance than that of deep‐learning‐based joint upsampling methods in local image processing as well as global image processing.
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