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Coast Sargassum Level Estimation from Smartphone Pictures.

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TLDR
In this article, the authors use ground-level smartphone photographs to estimate the amount of sargassum in the Mexican Caribbean, where they use CNNs and VGG networks.
Abstract
Since 2011, significant and atypical arrival of two species of surface dwelling algae, Sargassum natans and Sargassum Fluitans, have been detected in the Mexican Caribbean. This massive accumulation of algae has had a great environmental and economic impact. Therefore, for the government, ecologists, and local businesses, it is important to keep track of the amount of sargassum that arrives on the Caribbean coast. High-resolution satellite imagery is expensive or may be time delayed. Therefore, we propose to estimate the amount of sargassum based on ground-level smartphone photographs. From the computer vision perspective, the problem is quite difficult since no information about the 3D world is provided, in consequence, we have to model it as a classification problem, where a set of five labels define the amount. For this purpose, we have built a dataset with more than one thousand examples from public forums such as Facebook or Instagram and we have tested several state-of-the-art convolutional networks. As a result, the VGG network trained under fine-tuning showed the best performance. Even though the reached accuracy could be improved with more examples, the current prediction distribution is narrow, so the predictions are adequate for keeping a record and taking quick ecological actions.

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References
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Journal ArticleDOI

Assessment of a Smartphone-Based Camera System for Coastal Image Segmentation and Sargassum monitoring

TL;DR: The results indicate that a cheap camera-based video monitoring system is a suitable data source for coastal image classification, with optimal accuracy in the range between 75% and 96%.
Journal ArticleDOI

Using Landsat 8 OLI data to differentiate Sargassum and Ulva prolifera blooms in the South Yellow Sea

TL;DR: In this paper, a remote sensing algorithm was developed based on Landsat 8 Operational Land Imager (OLI) data to separately recognize concurrent Sargassum and Ulva prolifera in the South Yellow Sea.
Journal ArticleDOI

FVI—A Floating Vegetation Index Formed with Three Near-IR Channels in the 1.0–1.24 μm Spectral Range for the Detection of Vegetation Floating over Water Surfaces

Bo-Cai Gao, +1 more
- 07 Sep 2018 - 
TL;DR: It is expected that the use of this index for the global detection of floating vegetation from hyperspectral imaging data to be acquired with future satellite sensors will result in improved detection and therefore enhanced capability in estimating primary production, a measure of how much carbon is fixed per unit area per day by oceans and inland lakes.
Book ChapterDOI

Crowdsourcing for Sargassum Monitoring Along the Beaches in Quintana Roo

TL;DR: This study demonstrates how crowdsourcing and the new technologies, can be used to monitor Sargassum on the beaches in Quintana Roo, complementing satellite monitoring.
Proceedings ArticleDOI

Automatic Extraction Method of Sargassum Based on Spectral-Texture Features of Remote Sensing Images

TL;DR: In this paper, the spectral and texture features of Sargassum first are analyzed through calculating four measures of GLCM and sampling spectrum from typical pixels of S Gargassum blooms with high-resolution satellite data, and then the SargASSum is extracted using SVM by constructing spectral-texture eigenvectors.