Marine Animal Detection and Recognition with Advanced Deep Learning Models

Project Code :TCMAPY926

Objective

The objective of the Marine Animal Detection and Recognition with Advanced Deep Learning Models is to develop a system that can automatically detect and recognize marine animals from images or video footage captured in marine environments. The system will leverage advanced deep learning models to perform accurate and efficient detection and recognition tasks, contributing to marine conservation efforts, research and environmental monitoring.

Abstract

Marine ecosystems are vital components of our planet, housing a diverse array of species. Monitoring and understanding these ecosystems are essential for conservation efforts and scientific research. This paper presents a novel approach to marine animal detection and recognition using advanced deep learning models, specifically Mobile Net and ResNet-50, in the context of underwater image analysis. In recent years, deep learning has made significant strides in computer vision tasks, and its application to marine biology presents promising opportunities. Mobile Net and ResNet-50 are chosen for their efficiency and accuracy, making them suitable for real-time deployment in underwater environments. The proposed system employs a two-step process: object detection and species recognition. Firstly, Mobile Net is utilized for object detection to locate marine animals in underwater images. Next, ResNet-50 is applied for fine-grained species recognition, classifying the detected animals into specific categories. The model is trained on a comprehensive dataset comprising diverse marine species to ensure robust performance. Our experiments demonstrate the effectiveness of the approach in accurately detecting and recognizing marine animals across various underwater conditions, including low visibility and different lighting conditions. The system's performance is evaluated in terms of detection accuracy, species classification accuracy, and computational efficiency. This research contributes to the field of marine biology by providing a reliable and efficient tool for monitoring and studying marine life. The proposed deep learning-based system can assist researchers, conservationists, and marine biologists in cataloging and understanding marine ecosystems, ultimately supporting conservation efforts and advancing our knowledge of these critical environments. 

KEYWORDS: deep learning, mobile net, resnet-50, image processing, marine animals, deep oceans. 


NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

H/W CONFIGURATION:

Processor - I3/Intel Processor

Hard Disk - 160GB

Key Board - Standard Windows Keyboard

Mouse - Two or Three Button Mouse

Monitor - SVGA

RAM - 8GB


S/W CONFIGURATION:

β€’ Operating System :  Windows 7/8/10

β€’ Server side Script :  HTML, CSS, Bootstrap & JS

β€’ Programming Language :  Python

β€’ Libraries :  Flask, Pandas, Mysql.connector, Os, Smtplib, Numpy

β€’ IDE/Workbench :  PyCharm

β€’ Technology :  Python 3.6+

β€’ Server Deployment :  Xampp Server


Demo Video