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Main Authors: Zhou, Shizheng, Jiang, Juntao, Hong, Xiaohan, Hong, Yan, Fu, Pengcheng
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2211.07546
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_version_ 1866917758020616192
author Zhou, Shizheng
Jiang, Juntao
Hong, Xiaohan
Hong, Yan
Fu, Pengcheng
author_facet Zhou, Shizheng
Jiang, Juntao
Hong, Xiaohan
Hong, Yan
Fu, Pengcheng
contents Marine microalgae are widespread in the ocean and play a crucial role in the ecosystem. Automatic identification and location of marine microalgae in microscopy images would help establish marine ecological environment monitoring and water quality evaluation system. We proposed a new dataset for the detection of marine microalgae and a range of detection methods, the dataset including images of different genus of algae and the same genus in different states. We set the number of unbalanced classes in the data set and added images of mixed water samples in the test set to simulate the actual situation in the field. Then we trained, validated and tested the, TOOD, YOLOv5, YOLOv8 and variants of RCNN algorithms on this dataset. The results showed both one-stage and two-stage object detection models can achieve high mean average precision, which proves the ability of computer vision in multi-object detection of microalgae, and provides basic data and models for real-time detection of microalgal cells.
format Preprint
id arxiv_https___arxiv_org_abs_2211_07546
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Vision meets algae: A novel way for microalgae recognization and health monitor
Zhou, Shizheng
Jiang, Juntao
Hong, Xiaohan
Hong, Yan
Fu, Pengcheng
Computer Vision and Pattern Recognition
Databases
Marine microalgae are widespread in the ocean and play a crucial role in the ecosystem. Automatic identification and location of marine microalgae in microscopy images would help establish marine ecological environment monitoring and water quality evaluation system. We proposed a new dataset for the detection of marine microalgae and a range of detection methods, the dataset including images of different genus of algae and the same genus in different states. We set the number of unbalanced classes in the data set and added images of mixed water samples in the test set to simulate the actual situation in the field. Then we trained, validated and tested the, TOOD, YOLOv5, YOLOv8 and variants of RCNN algorithms on this dataset. The results showed both one-stage and two-stage object detection models can achieve high mean average precision, which proves the ability of computer vision in multi-object detection of microalgae, and provides basic data and models for real-time detection of microalgal cells.
title Vision meets algae: A novel way for microalgae recognization and health monitor
topic Computer Vision and Pattern Recognition
Databases
url https://arxiv.org/abs/2211.07546