Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network

In current remote sensing literature, the problems of sea-land segmentation and ship detection (including in-dock ships) are investigated separately despite the high correlation between them. This inhibits joint optimization and makes the implementation of the methods highly complicated. In this pap...

Full description

Bibliographic Details
Main Authors: Haoning Lin, Zhenwei Shi, Zhengxia Zou
Format: Article
Language:English
Published: MDPI AG 2017-05-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/9/5/480
id doaj-49e1d5df0cf04c86a88c4c0823fce52d
record_format Article
spelling doaj-49e1d5df0cf04c86a88c4c0823fce52d2020-11-24T22:21:06ZengMDPI AGRemote Sensing2072-42922017-05-019548010.3390/rs9050480rs9050480Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional NetworkHaoning Lin0Zhenwei Shi1Zhengxia Zou2Image Processing Center, School of Astronautics, Beihang University, Beijing 100191, ChinaImage Processing Center, School of Astronautics, Beihang University, Beijing 100191, ChinaImage Processing Center, School of Astronautics, Beihang University, Beijing 100191, ChinaIn current remote sensing literature, the problems of sea-land segmentation and ship detection (including in-dock ships) are investigated separately despite the high correlation between them. This inhibits joint optimization and makes the implementation of the methods highly complicated. In this paper, we propose a novel fully convolutional network to accomplish the two tasks simultaneously, in a semantic labeling fashion, i.e., to label every pixel of the image into 3 classes, sea, land and ships. A multi-scale structure for the network is proposed to address the huge scale gap between different classes of targets, i.e., sea/land and ships. Conventional multi-scale structure utilizes shortcuts to connect low level, fine scale feature maps to high level ones to increase the network’s ability to produce finer results. In contrast, our proposed multi-scale structure focuses on increasing the receptive field of the network while maintaining the ability towards fine scale details. The multi-scale convolution network accommodates the huge scale difference between sea-land and ships and provides comprehensive features, and is able to accomplish the tasks in an end-to-end manner that is easy for implementation and feasible for joint optimization. In the network, the input forks into fine-scale and coarse-scale paths, which share the same convolution layers to minimize network parameter increase, and then are joined together to produce the final result. The experiments show that the network tackles the semantic labeling problem with improved performance.http://www.mdpi.com/2072-4292/9/5/480semantic labelingconvolution neural networkfully convolutional networksea-land segmentationship detection
collection DOAJ
language English
format Article
sources DOAJ
author Haoning Lin
Zhenwei Shi
Zhengxia Zou
spellingShingle Haoning Lin
Zhenwei Shi
Zhengxia Zou
Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
Remote Sensing
semantic labeling
convolution neural network
fully convolutional network
sea-land segmentation
ship detection
author_facet Haoning Lin
Zhenwei Shi
Zhengxia Zou
author_sort Haoning Lin
title Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
title_short Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
title_full Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
title_fullStr Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
title_full_unstemmed Maritime Semantic Labeling of Optical Remote Sensing Images with Multi-Scale Fully Convolutional Network
title_sort maritime semantic labeling of optical remote sensing images with multi-scale fully convolutional network
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-05-01
description In current remote sensing literature, the problems of sea-land segmentation and ship detection (including in-dock ships) are investigated separately despite the high correlation between them. This inhibits joint optimization and makes the implementation of the methods highly complicated. In this paper, we propose a novel fully convolutional network to accomplish the two tasks simultaneously, in a semantic labeling fashion, i.e., to label every pixel of the image into 3 classes, sea, land and ships. A multi-scale structure for the network is proposed to address the huge scale gap between different classes of targets, i.e., sea/land and ships. Conventional multi-scale structure utilizes shortcuts to connect low level, fine scale feature maps to high level ones to increase the network’s ability to produce finer results. In contrast, our proposed multi-scale structure focuses on increasing the receptive field of the network while maintaining the ability towards fine scale details. The multi-scale convolution network accommodates the huge scale difference between sea-land and ships and provides comprehensive features, and is able to accomplish the tasks in an end-to-end manner that is easy for implementation and feasible for joint optimization. In the network, the input forks into fine-scale and coarse-scale paths, which share the same convolution layers to minimize network parameter increase, and then are joined together to produce the final result. The experiments show that the network tackles the semantic labeling problem with improved performance.
topic semantic labeling
convolution neural network
fully convolutional network
sea-land segmentation
ship detection
url http://www.mdpi.com/2072-4292/9/5/480
work_keys_str_mv AT haoninglin maritimesemanticlabelingofopticalremotesensingimageswithmultiscalefullyconvolutionalnetwork
AT zhenweishi maritimesemanticlabelingofopticalremotesensingimageswithmultiscalefullyconvolutionalnetwork
AT zhengxiazou maritimesemanticlabelingofopticalremotesensingimageswithmultiscalefullyconvolutionalnetwork
_version_ 1725772217794428928