Javascript must be enabled to continue!
Improved Binary Classification of Underwater Images Using a Modified ResNet-18 Model
View through CrossRef
In recent years, the classification of underwater images has become one of the most remarkable areas of research in computer vision due to its useful applications in marine sciences, aquatic robotics, and sea exploration. Underwater imaging is pivotal for the evaluation of marine eco-systems, analysis of biological habitats, and monitoring underwater infrastructure. Extracting useful information from underwater images is highly challenging due to factors such as light distortion, scattering, poor contrast, and complex foreground patterns. These difficulties make traditional image processing and machine learning techniques struggle to analyze images accurately. As a result, these challenges and complexities make the classification difficult or poor to perform. Recently, deep learning techniques, especially convolutional neural network (CNN), have emerged as influential tools for underwater image classification, contributing noteworthy improvements in accuracy and performance in the presence of all these challenges. In this paper, we have proposed a modified ResNet-18 model for the binary classification of underwater images into raw and enhanced images. In the proposed modified ResNet-18 model, we have added new layers such as Linear, rectified linear unit (ReLU) and dropout layers, arranged in a block that was repeated three times to enhance feature extraction and improve learning. This enables our model to learn the complex patterns present in the image in more detail, which helps the model to perform the classification very well. Due to these newly added layers, our proposed model addresses various complexities such as noise, distortion, varying illumination conditions, and complex patterns by learning vigorous features from underwater image datasets. To handle the issue of class imbalance present in the dataset, we applied a data augmentation technique. The proposed model achieved outstanding performance, with 96% accuracy, 99% precision, 92% sensitivity, 99% specificity, 95% F1-score, and a 96% Area under the Receiver Operating Characteristic Curve (AUC-ROC) score. These results demonstrate the strength and reliability of our proposed model in handling the challenges posed by the underwater imagery and making it a favorable solution for advancing underwater image classification tasks.
Title: Improved Binary Classification of Underwater Images Using a Modified ResNet-18 Model
Description:
In recent years, the classification of underwater images has become one of the most remarkable areas of research in computer vision due to its useful applications in marine sciences, aquatic robotics, and sea exploration.
Underwater imaging is pivotal for the evaluation of marine eco-systems, analysis of biological habitats, and monitoring underwater infrastructure.
Extracting useful information from underwater images is highly challenging due to factors such as light distortion, scattering, poor contrast, and complex foreground patterns.
These difficulties make traditional image processing and machine learning techniques struggle to analyze images accurately.
As a result, these challenges and complexities make the classification difficult or poor to perform.
Recently, deep learning techniques, especially convolutional neural network (CNN), have emerged as influential tools for underwater image classification, contributing noteworthy improvements in accuracy and performance in the presence of all these challenges.
In this paper, we have proposed a modified ResNet-18 model for the binary classification of underwater images into raw and enhanced images.
In the proposed modified ResNet-18 model, we have added new layers such as Linear, rectified linear unit (ReLU) and dropout layers, arranged in a block that was repeated three times to enhance feature extraction and improve learning.
This enables our model to learn the complex patterns present in the image in more detail, which helps the model to perform the classification very well.
Due to these newly added layers, our proposed model addresses various complexities such as noise, distortion, varying illumination conditions, and complex patterns by learning vigorous features from underwater image datasets.
To handle the issue of class imbalance present in the dataset, we applied a data augmentation technique.
The proposed model achieved outstanding performance, with 96% accuracy, 99% precision, 92% sensitivity, 99% specificity, 95% F1-score, and a 96% Area under the Receiver Operating Characteristic Curve (AUC-ROC) score.
These results demonstrate the strength and reliability of our proposed model in handling the challenges posed by the underwater imagery and making it a favorable solution for advancing underwater image classification tasks.
Related Results
The Synthesis of Unpaired Underwater Images for Monocular Underwater Depth Prediction
The Synthesis of Unpaired Underwater Images for Monocular Underwater Depth Prediction
Underwater depth prediction plays an important role in underwater vision research. Because of the complex underwater environment, it is extremely difficult and expensive to obtain ...
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies are revolutionizing the way we explore and understand the underwater world. This review examines the latest advancements in underwater surve...
The assessment of Computer Vision Algorithms for the Diagnosis of Prostatic Adenocarcinoma in Surgical Specimens
The assessment of Computer Vision Algorithms for the Diagnosis of Prostatic Adenocarcinoma in Surgical Specimens
Abstract
Introduction
Prostatic malignancy is a major cause of morbidity and fatality among men around the globe. More than a m...
A new conceptual design for subsea charging station
A new conceptual design for subsea charging station
With deepening ocean development , a larger scale Internet of Underwater Things (IoUT) is being realized[1].More and more underwater equipment is being deployed, various ocean moni...
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Underwater crack detection in dam structures is of significant engineering importance and scientific value for ensuring the structural safety, assessing operational conditions, and...
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
In this paper, Convolutional Neural Networks were used to enhance the visual fidelity of underwater images. The UWCNN is introduced in this article, which utilizes underwater scene...
Coot Bird Optimization-Based ESkip-ResNet Classification for Deepfake Detection
Coot Bird Optimization-Based ESkip-ResNet Classification for Deepfake Detection
With increased digitization comes an increase in the speed at which threats to the data are emerging. Although it can be challenging to identify, fake image creation doesn’t requir...
The Histological Diagnosis of Colonic Adenocarcinoma by Applying Partial Self Supervised Learning
The Histological Diagnosis of Colonic Adenocarcinoma by Applying Partial Self Supervised Learning
Abstract
Background
The cancer of colon is one of the important cause of morbidity and mortality in adults. For the management ...

