Trash detection in an aquatic environment
Date
2024-01Publisher
Brac UniversityAuthor
Roshni, Nishat MahmudArefin, Meshkatul
Joy, Kazi Masfiqul Alam
Hassan, Marjanul
Karmakar, Shashwata
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Show full item recordAbstract
Trash in the water bodies is alarming for the world nowadays. As it is a limited
source, pollution caused by the trash is threatening for the environment, wild-life
and long term effect for the human health and economy. In developing countries
like Bangladesh, where a large number of the species of biodiversity belongs to the
aquatic environment, pollution caused by waste can have serious consequences for
the economy and the endangered species of the biodiversity. In order to address these
issues, this paper presents the analysis and performances of the detection models
which will be beneficial in the future to implement an aquatic environment waste
detection system. By utilizing deep learning techniques the system will be able to
analyze data from edge devices and make accurate predictions about the presence
of trash under the water. After reviewing a plenty of papers, we have noticed that
the other detection models such as YOLOv2, Inceptionv3, Mask-R CNN and CNN
require a lot of time and provide less accuracy compared to YOLOv5 and YOLOv7.
That’s why we have chosen these algorithm models to analyze our dataset. We
have also tried to implement a new algorithm called EfficientDet which is an object
detection algorithm that combines efficiency and accuracy. It was introduced by
Google in 2019. In this paper, we have prepared our self-prepared dataset which
includes 1400+ pieces of data collected from various sources like St. Martin’s Island,
pond, roadside drains and so on. Then we have processed and train the data and
run three algorithm models which includes YOLOv5 , YOLOv7 and EfficientDet
and got accuracy of 97%, 93% and 96%. The challenges of our work were to detect
the trashes in the polluted water where the light is not sufficient. Because in the
deep of the sea or any water source where the light is minimal, the detection of
trashes become difficult. We hope to enrich our dataset more in the future and
aim to build a model using raspberry pi or arduino to use the progressive algorithm
models by eradicating the challenges of underwater trash detection.