Abstract

Algal blooms are collections of algae that exist on the surface of the water. Because of their negative effects on aquatic organisms and humans, extensive studies have been performed to detect harmful algal blooms (HABs). However, most of the detection methods are based on remote-sensing imaging and have limitations with regard to resolution, time, and cost. In this paper, we present a new cyanobacterial algal bloom detection algorithm in inland water from a single image. The proposed method can be used as a first step in automatic early detection, warning, and rapid response systems that can be employed to mitigate the detrimental effects of HAB contamination in inland water bodies. We first divide an image into homogeneous regions via a density-based spatial clustering (DBSCAN) algorithm. From the segmented regions, we extract water bodies using wavelet leader-based texture analysis. The entropy and the number of zero wavelet coefficients are used as measures for the water body extraction. For images with a sky region, we introduce a simple sky-region removal method using the average brightness of segmented regions. We propose three probabilistic indices bases on an RGB-based vegetation index, a hue-based index, and a saturation-based index for estimating the degree of green algae in the extracted water body. The final index is obtained via multiplication of these three indices. In experiments on various types of images, our proposed algorithm achieves 94% accuracy for water body extraction. The proposed approach achieves better green algae estimation performance than the conventional vegetation index-based methods.

Highlights

  • Algal blooms are collections of algae that grow in eutrophic lakes, slow-flowing rivers, or stagnant oceans, and are accumulated on the surface of water

  • We present an efficient cyanobacterial algal bloom detection algorithm based on RGB images obtained from smartphones, the Internet, and unmanned aerial vehicles (UAVs)

  • The test images are composed of 161 images captured by UAVs, 135 aerial images downloaded from K-water [34], and 170 images from online sources (Google Images)

Read more

Summary

Introduction

Algal blooms are collections of algae that grow in eutrophic lakes, slow-flowing rivers, or stagnant oceans, and are accumulated on the surface of water. Algal blooms consume a large amount of oxygen, reducing the amount of dissolved oxygen in water, and can be a major threat to aquatic life. When harmful algal blooms (HABs) occur, the cost of removing unfamiliar tastes and odors in the production of tap water increases, and HABs hinder water activities such as swimming, fishing, and water skiing. Overgrown algal blooms have negative effects on aquatic ecosystems, causing the death of many aquatic animals and plants. To counteract the negative effects of HABs, an automatic HAB monitoring and detection system is needed. The associate editor coordinating the review of this manuscript and approving it for publication was Md. Asikuzzaman

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call