Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection

To visually detect sea-surface targets, the objects of interest must be effectively and rapidly isolated from the background of sea-surface images. In contrast to traditional image detection methods, which employ a single visual feature, this paper proposes a significance detection algorithm based o...

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Main Authors: Chang Lin, Wu Chen, Haifeng Zhou
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Journal of Marine Science and Engineering
Subjects:
Online Access:https://www.mdpi.com/2077-1312/8/10/799
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spelling doaj-6046722a631041a19cd6dc5965a613a82021-04-02T11:11:16ZengMDPI AGJournal of Marine Science and Engineering2077-13122020-10-01879979910.3390/jmse8100799Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line DetectionChang Lin0Wu Chen1Haifeng Zhou2Marine Engineering College and Key Laboratory of Fujian province Marine and Ocean Engineering, Jimei University, Xiamen 361021, ChinaMarine Engineering College and Key Laboratory of Fujian province Marine and Ocean Engineering, Jimei University, Xiamen 361021, ChinaMarine Engineering College and Key Laboratory of Fujian province Marine and Ocean Engineering, Jimei University, Xiamen 361021, ChinaTo visually detect sea-surface targets, the objects of interest must be effectively and rapidly isolated from the background of sea-surface images. In contrast to traditional image detection methods, which employ a single visual feature, this paper proposes a significance detection algorithm based on the fusion of multi-visual features after detecting the sea-sky-lines. The gradient edges of the sea-surface images are enhanced using a Gaussian low-pass filter to eliminate the effect of the image gradients pertaining to the clouds, wave points, and illumination. The potential region and points of the sea-sky-line are identified. The sea-sky-line is fitted through polynomial iterations to obtain a sea-surface image containing the target object. The saliency subgraphs of the high and low frequency, gradient texture, luminance, and color antagonism features are fused to obtain an integrated saliency map of the sea-surface image. The saliency target area of the sea surface is segmented. The effectiveness of the proposed method was verified. The average detection rate and time for the sea-sky-line detection were 96.3% and 1.05 fps, respectively. The proposed method outperformed the existing saliency models on the marine obstacle detection dataset and Singapore maritime dataset, with mean absolute errors of 0.075 and 0.051, respectively.https://www.mdpi.com/2077-1312/8/10/799sea-sky-linevisual detectionsea surfacesaliency mapgradient texture
collection DOAJ
language English
format Article
sources DOAJ
author Chang Lin
Wu Chen
Haifeng Zhou
spellingShingle Chang Lin
Wu Chen
Haifeng Zhou
Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
Journal of Marine Science and Engineering
sea-sky-line
visual detection
sea surface
saliency map
gradient texture
author_facet Chang Lin
Wu Chen
Haifeng Zhou
author_sort Chang Lin
title Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
title_short Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
title_full Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
title_fullStr Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
title_full_unstemmed Multi-Visual Feature Saliency Detection for Sea-Surface Targets through Improved Sea-Sky-Line Detection
title_sort multi-visual feature saliency detection for sea-surface targets through improved sea-sky-line detection
publisher MDPI AG
series Journal of Marine Science and Engineering
issn 2077-1312
publishDate 2020-10-01
description To visually detect sea-surface targets, the objects of interest must be effectively and rapidly isolated from the background of sea-surface images. In contrast to traditional image detection methods, which employ a single visual feature, this paper proposes a significance detection algorithm based on the fusion of multi-visual features after detecting the sea-sky-lines. The gradient edges of the sea-surface images are enhanced using a Gaussian low-pass filter to eliminate the effect of the image gradients pertaining to the clouds, wave points, and illumination. The potential region and points of the sea-sky-line are identified. The sea-sky-line is fitted through polynomial iterations to obtain a sea-surface image containing the target object. The saliency subgraphs of the high and low frequency, gradient texture, luminance, and color antagonism features are fused to obtain an integrated saliency map of the sea-surface image. The saliency target area of the sea surface is segmented. The effectiveness of the proposed method was verified. The average detection rate and time for the sea-sky-line detection were 96.3% and 1.05 fps, respectively. The proposed method outperformed the existing saliency models on the marine obstacle detection dataset and Singapore maritime dataset, with mean absolute errors of 0.075 and 0.051, respectively.
topic sea-sky-line
visual detection
sea surface
saliency map
gradient texture
url https://www.mdpi.com/2077-1312/8/10/799
work_keys_str_mv AT changlin multivisualfeaturesaliencydetectionforseasurfacetargetsthroughimprovedseaskylinedetection
AT wuchen multivisualfeaturesaliencydetectionforseasurfacetargetsthroughimprovedseaskylinedetection
AT haifengzhou multivisualfeaturesaliencydetectionforseasurfacetargetsthroughimprovedseaskylinedetection
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