首页|Data on Beggiatoa Reported by Researchers at University of Tasmania (A Novel Adaptive Ensemble Learning Framework for Automated Beggiatoa Spp. Coverage Estimation)

Data on Beggiatoa Reported by Researchers at University of Tasmania (A Novel Adaptive Ensemble Learning Framework for Automated Beggiatoa Spp. Coverage Estimation)

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A new study on Gram-Negative Bacteria - Beggiatoa is now available. According to news originating from Hobart, Australia, by NewsRx correspondents, research stated, "The presence of Beggiatoa Spp. indicates anoxic conditions or 'poor condition' in marine sediments beneath aquaculture pens, resulting from organic enrichment. Currently, the most efficient approach to estimate Beggiatoa Spp. coverage, and thus the extent of the issue, involves video surveys which are scored by human observers for presence of this bacteria." Our news journalists obtained a quote from the research from the University of Tasmania, "However, this approach is highly time-consuming and relies heavily on the expertise and experience of the individuals involved, thus affecting its accuracy. Machine learning-based computer vision techniques, such as Convolutional Neural Networks (CNNs), offer the potential for automated estimation of Beggiatoa Spp. coverage. However, most existing machine learning methods focus solely on the estimation of the coverage via presence, absence of a single type of Beggiatoa Spp.. These approaches typically rely on binary classification to distinguish the object from the background when estimating coverage. Nevertheless, the inclusion of subordinate categories within high-level classifications poses a great challenge for accurately estimating their coverage rates. In this paper, an adaptive ensemble learning approach was proposed to estimate Beggiatoa Spp. coverage. Unlike other approaches, the proposed approach is capable in adaptively extracting and fusing features from underwater images and accurately estimating the coverages of multiple types of Beggiatoa Spp. through ensemble learning."

HobartAustraliaAustralia and New ZealandBeggiatoaCyborgsEmerging TechnologiesGammaproteobacteriaGram-Negative Aerobic BacteriaGram-Negative BacteriaMachine LearningProteobacteriaThiotrichaceaeUniversity of Tasmania

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.29)
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