riversongs Posted May 27 Report Share Posted May 27 Free Download Real-Time AI Animal Identification with Deep Learning & CVPublished 5/2025Created by Muhammad Yaqoob GMP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 ChLevel: All | Genre: eLearning | Language: English | Duration: 14 Lectures ( 47m ) | Size: 565 MBTracking the Wild: Real-Time Animal Identification Using Deep Learning with Python & Computer VisionWhat you'll learnLearn real-time animal detection and ID basics, and their role in wildlife monitoring, conservation, and ecological research.Set up Python with TensorFlow/Keras for deep learning and OpenCV for image preprocessing to enable robust, real-time animal classification.Explore the EfficientNetB0 model, optimized for accurate animal classification across 90 species, and its application in real-time video feeds.Learn data preprocessing techniques, including image normalization, resizing, and augmentation, to improve model performance and generalization.Implement real-time visualization of identified animals by annotating video frames with bounding boxes, species labels, and confidence scores.Utilize Flask as a backend framework to serve detection results and integrate with an interactive web-based dashboard for monitoring.Enable global streaming of real-time detection using Ngrok, allowing remote access to the live video feed from any location.Implement MQTT for efficient transmission of detected animal data, facilitating seamless communication with IoT-based monitoring systems.Address challenges such as occlusions, variations in lighting conditions, and species with similar features by optimizing model training and inference strategUse the system for wildlife conservation, anti-poaching, and research focused on habitat monitoring and biodiversity tracking.RequirementsBasic understanding of Python programming (helpful but not mandatory).A laptop or desktop computer with internet access[Windows OS with Minimum 4GB of RAM).No prior knowledge of AI or Machine Learning is required-this course is beginner-friendly.Enthusiasm to learn and build practical projects using AI and IoT tools.[b]Description[/b]Welcome to the AI-Powered Real-Time Animal Identification System Course! In this hands-on course, you'll learn how to build a real-time animal detection and identification system using the EfficientNetB0 deep learning model. This project leverages Flask for backend development, MQTT for seamless data communication, and Ngrok for global live streaming-allowing remote access to real-time wildlife monitoring.This course focuses on leveraging EfficientNetB0 to classify and identify 90 different animal species from a Kaggle dataset, providing valuable insights for conservationists, researchers, and AI enthusiasts. By the end of this course, you'll have developed a fully functional system capable of detecting animals in real-time, displaying results through a web-based interface.What You Will Learn:● Set up your Python development environment with essential libraries like TensorFlow/Keras, OpenCV, and Flask.● Use EfficientNetB0, a high-performance deep learning model, to classify animals from real-time video feeds.● Preprocess images and video streams by applying normalization, resizing, and augmentation for optimal detection accuracy.● Implement a Flask-based web dashboard to visualize identified animals with bounding boxes, species names, and confidence scores.● Enable global streaming using Ngrok, allowing real-time animal identification from anywhere in the world.● Integrate MQTT for efficient communication between detection models and the web interface.● Overcome challenges such as variations in lighting conditions, occlusions, and species with similar physical features.● Apply your knowledge to wildlife conservation, ecological research, and AI-driven biodiversity tracking.Enroll today and start building your Tracking the Wild: Real-Time Animal Identification Using Deep LearningWho this course is forStudents looking to dive into AI and gain hands-on experience in real-time animal detection using EfficientNetB0, Flask, and MQTT.Working professionals wanting to upskill in AI, deep learning, and computer vision for applications in wildlife monitoring and conservation.IoT enthusiasts who want to integrate AI-driven animal identification into Internet of Things (IoT) solutions for smart surveillance and ecological research.Aspiring developers aiming to build a career in AI, machine learning, or computer vision, with a focus on real-time detection and streaming technologies.Wildlife researchers and conservationists interested in leveraging AI to track and monitor species in real-world environments.Homepagehttps://www.udemy.com/course/real-time-ai-animal-identification-with-deep-learning-cv/AusFilehttps://ausfile.com/x6jd2o3gb4hr/lemzj.RealTime.AI.Animal.Identification.with.Deep.Learning..CV.rar.htmlRapidgator Links Downloadhttps://rg.to/file/43c0ed207c144b89988d112772891f00/lemzj.RealTime.AI.Animal.Identification.with.Deep.Learning..CV.rar.htmlFikper Links Downloadhttps://fikper.com/ZAeM2huZJG/lemzj.RealTime.AI.Animal.Identification.with.Deep.Learning..CV.rar.htmlNo Password - Links are Interchangeable Link to comment Share on other sites More sharing options...
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