Welcome to Final Year Projects!!
  • Newsletter
  • +91 90254 34960
  • Contact Us
  • FAQs
Select category
  • Select category
  • Artificial Intelligence
  • Biomedical
  • Block Chain
  • Cloud Computing
  • Cyber Security
  • Data mining
  • Deep Learning
  • Embedded Components
  • Generative AI
  • IoT
  • LORA
  • Machine Learning
  • Mini Projects
    • Embedded
    • Java
    • Matlab
    • Python
    • VLSI
      • pipeline
  • Natural Language Processing
  • Projects
    • Embedded
      • Agriculture
      • Artificial Intelligence(AI)
      • Biomedical
      • Digital Twin
      • Federated Learning
      • Image Processing
      • Internet of Things(IoT)
      • LoRaWAN
      • Python Interface
      • Raspberry PI
      • Robotics
      • Social Cause
      • Wireless Sensor Network
    • Java
      • Android
      • Artificial Intelligence
      • Augmented Reality
      • Blockchain
      • Cloud Computing
      • Cybersecurity
      • Data Mining
      • Internet of Things (IoT)
      • Machine Learning
      • Secure Computing
      • Social Cause
    • Matlab
      • Cryptography- Authentication
      • Cyber Security
      • Deep Learning
      • Digital Image Processing
      • Machine Learning
      • Natural Language Processing
    • Python
      • Agent AI
      • Blockchain
      • Cybersecurity
      • Deep Learning
      • Explainable AI
      • Federated Learning
      • Generative AI
      • GPT
      • Graph Neural Network
      • Machine Learning
      • OpenCV
      • Quantum Encryption
      • Reinforcement Learning
    • VLSI
      • Low Power VLSI Design
      • On-Chip Cryptography
      • Self Repairing Technology
  • Robotics
  • Secure Computing
Login / Register
0 Wishlist
0 Compare
1 item ₹5,500.00
Menu
1 item ₹5,500.00
Browse Categories
  • Java
  • Python
  • Embedded
  • Machine Learning
  • Mechanical
  • Matlab
  • VLSI
  • Raspberry PI
  • Artificial Intelligence
  • Home
  • Shop
    • PROJECTS
      • PROJECTS
        • Java
        • Python
        • Embedded
        • Matlab
        • VLSI
        • Mechanical
    • MINI PROJECTS
      • PROJECTS
        • Java
        • Python
        • Matlab
        • VLSI
        • Embedded
    • WORKSHOPS
      • Workshops
        • Python
        • Robotics
        • Industry Visit
        • Raspberry Pi
        • Image Processing
        • Mechanical Engineering
        • VLSI
        • Arduino
        • Matlab
        • Machine Learning
        • Embedded
        • Android
        • IoT
    • INTERNSHIPS
      • Internships
        • Python
        • Machine learning
        • Artificial intelligence
        • Web development
        • Android
        • IoT / internet of things
        • Cloud Computing
        • Digital Marketing
        • Big Data
  • Journal paper
  • Blog
  • About us
  • Contact us
“Road Traffic Accident Risk Prediction and Key Factor Identification Framework Based on Explainable Deep Learning” has been added to your cart. View cart
Click to enlarge
Home Projects Python Whale and Dolphin Classification
Medical Chatbot
Medical Chatbot ₹5,500.00
Back to products
Resume Builder
Resume Builder ₹2,000.00

Whale and Dolphin Classification

₹5,500.00

The proposed method involves a multi-step process to classify whale and dolphin species from images. First, the dataset is collected and pre-processed to ensure high-quality input data. The VGG16 model is used to extract features from the images, capturing complex patterns and details. These features are then used to train a Support Vector Machine (SVM) model, which excels in binary and multi-class classification tasks.

Watch Product Video
Compare
Add to wishlist
Categories: Deep Learning, Deep Learning, Projects, Python Tags: Deep Learning, Python, VGG16
Share:
  • Description
  • Reviews (0)
  • Software Download
  • Download Abstract
  • Shipping & Delivery
Description

Aim:

        To classify whale and dolphin species from images using feature extraction with VGG16 and a Support Vector Machine (SVM) model.

Abstract:

       Whale and dolphin species classification is crucial for marine biology, aiding in research and conservation efforts. This project aims to create an image classification system that identifies various whale and dolphin species. Using a parquet file containing images and corresponding labels, the dataset is pre-processed to ensure consistency and quality. The VGG16 deep convolutional neural network is used to extract image features, providing a robust foundation for feature engineering. These extracted features are used to train a Support Vector Machine (SVM) model, known for its effectiveness in classification tasks. The model is then deployed on Streamlit, upload images for classification. This approach combines deep learning with traditional machine learning to create an efficient, user-friendly system that can accurately classify whale and dolphin species. By providing this tool, we aim to support marine biologists, researchers, and conservationists in their efforts to study and protect these important marine mammals.

Introduction:

      Whales and dolphins are among the most captivating marine mammals, known for their intelligence, social behaviour, and unique characteristics. Accurate species classification plays a vital role in marine biology, as it informs research, conservation efforts, and environmental policies. Traditional methods for species classification often require expert knowledge and manual inspection, which can be time-consuming and prone to human error.

     In recent years, artificial intelligence (AI) and machine learning have made significant strides in automating complex tasks. Image classification, in particular, has benefited from deep learning techniques that can recognize intricate patterns in large datasets. The goal of this project is to leverage these advancements to develop a system that can classify whale and dolphin species from images.

      The project uses a combination of deep learning and machine learning techniques to achieve accurate classification. VGG16, a deep convolutional neural network, is used to extract features from the images, providing a comprehensive representation of the visual data. These features are then used to train a Support Vector Machine (SVM) model, known for its robustness and accuracy in classification tasks.

       The deployment of this system on Streamlit allows for a user-friendly interface, enabling users to upload images and receive classification results quickly. This streamlined approach has the potential to significantly reduce the time and effort required for species classification, making it an invaluable tool for marine biologists, researchers, and conservationists.

Existing Method:

      Traditional methods for classifying whale and dolphin species often involve manual inspection and expert knowledge. These methods can be subjective and time-consuming, with varying degrees of accuracy. Some existing automated systems use basic machine learning techniques, but they may lack the accuracy and robustness of deep learning-based approaches.

Proposed Method:

       The proposed method involves a multi-step process to classify whale and dolphin species from images. First, the dataset is collected and pre-processed to ensure high-quality input data. The VGG16 model is used to extract features from the images, capturing complex patterns and details. These features are then used to train a Support Vector Machine (SVM) model, which excels in binary and multi-class classification tasks. The trained model is deployed on Streamlit, providing a simple user interface where users can upload images and get classification results. This combination of deep learning and SVM creates a robust and accurate system for species classification.

Reviews (0)

Reviews

There are no reviews yet.

Be the first to review “Whale and Dolphin Classification” Cancel reply

Your email address will not be published. Required fields are marked *


The reCAPTCHA verification period has expired. Please reload the page.

Software Download

You must be logged in to download the software.

Download Abstract

You must be logged in to download the abstract.

Shipping & Delivery
wd-ship-1
wd-ship-2

MAECENAS IACULIS

Vestibulum curae torquent diam diam commodo parturient penatibus nunc dui adipiscing convallis bulum parturient suspendisse parturient a.Parturient in parturient scelerisque nibh lectus quam a natoque adipiscing a vestibulum hendrerit et pharetra fames nunc natoque dui.

ADIPISCING CONVALLIS BULUM

  • Vestibulum penatibus nunc dui adipiscing convallis bulum parturient suspendisse.
  • Abitur parturient praesent lectus quam a natoque adipiscing a vestibulum hendre.
  • Diam parturient dictumst parturient scelerisque nibh lectus.

Scelerisque adipiscing bibendum sem vestibulum et in a a a purus lectus faucibus lobortis tincidunt purus lectus nisl class eros.Condimentum a et ullamcorper dictumst mus et tristique elementum nam inceptos hac parturient scelerisque vestibulum amet elit ut volutpat.

Related products

Compare

Blockchain and AI-Empowered Healthcare Insurance Fraud Detection: An Analysis, Architecture, and Future Prospects

Python, Blockchain, Java, Blockchain, Projects, Block Chain
₹5,500.00
Aim:            The main aim of this project is to detect Healthcare Insurance Fraud and eliminate using blockchain and machine
Add to wishlist
Add to cart
Quick view
Compare

Deep Learning Model for Driver Behavior Detection in Cyber-Physical System-Based Intelligent Transport Systems

Python, Deep Learning, Projects, Artificial Intelligence, Deep Learning
₹5,500.00
Aim: To develop a real-time system for detecting and alerting drowsiness in drivers using YOLOv8 object detection.
Add to wishlist
Add to cart
Quick view
Compare

Enhancing Smishing Detection A Deep Learning Approach for Improved Accuracy and Reduced False Positives

Python, Machine Learning, Machine Learning
₹5,500.00
The aim of this work is to explore and develop advanced methods for enhancing the detection and prevention of smishing attacks. This involves utilizing cutting-edge technologies such as machine learning, artificial intelligence, and behavioral analysis to identify and block fraudulent SMS messages, protecting users from financial and personal data theft. The goal is to create more effective, real-time detection systems to mitigate the growing threat of smishing attack
Add to wishlist
Add to cart
Quick view
Compare

Incorporating Meteorological Data and Pesticide Information to Forecast Crop Yields Using Machine Learning

Python, Machine Learning, Projects, Machine Learning
₹5,500.00
To develop a robust and accurate crop yield prediction system by integrating meteorological data, pesticide usage records, and crop yield statistics, leveraging advanced machine learning techniques to promote sustainable agricultural practices and enhance global food security.
Add to wishlist
Add to cart
Quick view
Compare

Predictive Analysis of Network based Attacks by Hybrid Machine Learning Algorithms

Python, Machine Learning, Projects, Machine Learning
₹5,500.00
To enhance DDoS attack detection by implementing a machine learning system with hyper-parameter optimization and advanced prediction techniques
Add to wishlist
Add to cart
Quick view
Compare

Real-Time Plant Disease Dataset Development and Detection of Plant Disease Using Deep Learning

Python, Deep Learning, Projects, Artificial Intelligence, Deep Learning
₹5,500.00
Aim: The primary aim of this project is to develop an advanced plant disease detection system that leverages state-of-the-art deep learning architectures, such as ResNet152V2 and EfficientNetV2B3, to achieve higher accuracy, scalability, and efficiency.
Add to wishlist
Add to cart
Quick view
Compare

Social Media Forensics an Adaptive Cyberbullying-Related Hate Speech Detection Approach Based on Neural Networks with Uncertainty

Python, Cybersecurity, Deep Learning, Projects, Cyber Security, Deep Learning
₹5,500.00
Aim: To propose an approach that improves the accuracy and efficiency of cyberbullying detection in social media text by utilizing an advanced model that aims to overcome ambiguity and classification challenges.
Add to wishlist
Add to cart
Quick view
Compare

Toward Improving Breast Cancer Classification Using an Adaptive Voting Ensemble Learning Algorithm

Python, Machine Learning, Projects, Artificial Intelligence, Machine Learning
₹5,500.00
Aim: The primary aim of this study is to develop a robust and accurate auxiliary diagnostic system for breast cancer by integrating machine learning techniques with a hybrid strategy.
Add to wishlist
Add to cart
Quick view

    Global Techno Solutions - GTS, started by young engineering graduates to overcome a problem they faced during their academic years. That is "Providing Solutions". They kept it as the motto for their company.

    • Phone: (+91) 90254 34960
    • Mail: sales@finalyearprojects.in
    Our Category
    • Java
    • Python
    • Embedded
    • Matlab
    • VLSI
    • Mechanical
    USEFUL LINKS
    • Privacy Policy
    • Returns
    • Terms & Conditions
    • Contact Us
    • Latest News
    • FAQ
    Mini Projects
    • Java
    • Python
    • Embedded
    • Matlab
    • VLSI
    Copyright Finalyearprojects.In 2024
    payments
    • Menu
    • Categories
    • Java
    • Python
    • Embedded
    • Machine Learning
    • Mechanical
    • Matlab
    • VLSI
    • Raspberry PI
    • Artificial Intelligence
    • Home
    • Shop
    • Blog
    • About us
    • Contact us
    • Wishlist
    • Compare
    • Login / Register
    Shopping cart
    Close
    Sign in
    Close

    Lost your password?

    OR
    Don't have an account? Signup

    No account yet?

    Create an Account

    HEY YOU, SIGN UP AND CONNECT TO GLOBAL TECHNO SOLUTIONS

    Be the first to learn about our latest trends and get exclusive offers

    Will be used in accordance with our Privacy Policy

    Shop
    0 Wishlist
    1 item Cart
    My account

    Back