Publication | Open Access
Assessment of a Smartphone-Based Camera System for Coastal Image Segmentation and Sargassum monitoring
49
Citations
47
References
2020
Year
Convolutional Neural NetworkEnvironmental MonitoringMachine LearningEngineeringMarine SensorOceanographyCoastal Image ClassificationSmartphone-based Camera SystemImage Sequence AnalysisImage ClassificationImage AnalysisData ScienceSargassum MonitoringPattern RecognitionSemantic SegmentationSatellite ImagingCoastal Image SegmentationMachine VisionSupervised ClassificationCoastal MonitoringSynthetic Aperture RadarObject DetectionGeographyDeep LearningComputer VisionCoastal ManagementDigital PhotogrammetryRemote SensingOptical Remote SensingImage SegmentationCoastal Video Monitoring
Coastal video monitoring has proven to be a valuable ground-based technique to investigate ocean processes. Presently, there is a growing need for automatic, technically efficient, and inexpensive solutions for image processing. Moreover, beach and coastal water quality problems are becoming significant and need attention. This study employs a methodological approach to exploit low-cost smartphone-based images for coastal image classification. The objective of this paper is to present a methodology useful for supervised classification for image semantic segmentation and its application for the development of an automatic warning system for Sargassum algae detection and monitoring. A pixel-wise convolutional neural network (CNN) has demonstrated optimal performance in the classification of natural images by using abstracted deep features. Conventional CNNs demand a great deal of resources in terms of processing time and disk space. Therefore, CNN classification with superpixels has recently become a field of interest. In this work, a CNN-based deep learning framework is proposed that combines sticky-edge adhesive superpixels. 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%. Furthermore, an application of the method for an ongoing case study related to Sargassum monitoring in the French Antilles proved to be very effective for developing a warning system, aiming at evaluating floating algae and algae that had washed ashore, supporting municipalities in beach management.
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