基于模糊图像的人工神经网络在洪都拉斯卡约布兰科珊瑚礁保护中的珊瑚检测

Delond Angelo Jimenez-Nixon, Jorge F. Matute Corrales, Alicia María Reyes-Duke
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引用次数: 0

摘要

了解珊瑚礁的影响和好处,鉴定、监测和保护珊瑚物种是非常重要的,将技术进步应用于这一过程大大增加了价值。技术可以在时间、资源、人员和数据收集方面提高效率。在洪都拉斯的圣达菲,最近发现了一个名为Cayo Blanco的珊瑚礁,它是中美洲珊瑚礁的延续。使用大约30%的模糊图像来训练神经网络。这项研究的目的是创建一个图形用户界面,配备一个能够计数、分类和识别在洪都拉斯卡约布兰科发现的至少五种珊瑚的神经网络。该算法具有95%的精度,使用Coral数据库中的399张图像进行训练,可以显示和注册检测结果,并提供特定的置信度测量。我们得出的结论是,对于机器学习模型,图像数据的数量优于图像数据的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coral Detection using Artificial Neural Networks based on Blurry Images for Reef Protection in Cayo Blanco, Honduras
Knowing the implications and benefits of coral reefs, the identification, monitoring and protection of coral species are of major importance, and applying technological advances to this process greatly adds value. Technology allows for better efficiency in terms of time, resources, personnel and the gathering of data. In Santa Fe, Honduras recently the discovered of a coral reef called Cayo Blanco was made, which is a continuation of the Mesoamerican reef. A neural network was trained using approximately 30% of blurry images. This research aims to create a graphic user interface equipped with a neural network capable of counting, classifying, and identifying at least five coral species found in Cayo Blanco, Honduras. The algorithm has 95% precision, is trained with 399 images in the Coral database, can show and register the detections, and provide a specific measurement of confidence. We concluded that for machine learning models, the quantity outperformed the quality of the image data.
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