[100% Off] Practical Computer Vision Mastery: 20+ Python &Amp; Ai Projects
Master Computer Vision Course in 2025 with Deep Learning, Python, OpenCV, YOLO, OCR & GUI through 20+ handson projects
What you’ll learn
- Understand the origins
- evolution
- and real-world impact of AI
- with a focus on computer vision’s role in modern applications.
- Install and configure Python and VS Code for seamless development of vision-based projects on any platform.
- Apply OpenCV fundamentals—reading
- writing
- displaying
- resizing
- cropping
- and color-space conversion of images and videos.
- Implement image processing techniques such as thresholding
- morphological transforms
- bitwise operations
- and histogram equalization.
- Detect edges
- corners
- contours
- and keypoints; match features across images to enable object recognition and scene analysis.
- Leverage advanced methods—Canny edge detection
- texture analysis
- optical flow
- object tracking
- segmentation
- and OCR with Tesseract.
- Build a smart face‐attendance system: enroll faces
- extract embeddings
- train a model
- and launch a Tkinter GUI for live recognition.
- Create a driver-drowsiness detector using EAR/MAR metrics
- integrate it into a Tkinter dashboard
- and run real-time video inference.
- Train YOLOv7-tiny for object and weapon detection
- deploy in Colab
- and build a GUI for live detection.
- Implement a YOLOv8 people‐counting and entry/exit tracker
- visualize counts with Tkinter
- and manage line‐coordinate logic.
- Develop license‐plate detection & recognition pipelines with Roboflow annotations
- API integration
- and live GUI display.
- Craft a traffic‐sign recognition system: preprocess data
- train EfficientNet-B0
- and perform inference in real time.
- Build AI-powered safety apps: accident detection with MQTT alerts
- fall-detection APIs
- and smart vehicle speed tracking.
- Detect emotions
- age
- and gender from live video using pre-trained models and deploy via Tkinter interfaces.
- Design a real-time mask detection application with YOLOv11
- from dataset prep to GUI inference.
- Create a hand-gesture recognition system with landmark annotation
- MediaPipe pose estimation
- and interactive GUI.
- Train a wildlife identification model on EfficientNetB0
- deploy in Flask/Ngrok
- and recognize animals in live streams.
- Integrate OCR via Tesseract for text extraction in images and build segmentation pipelines for robust scene parsing.
Requirements
- Basic Python programming knowledge
- Windows PC or Laptop with 4GB+ RAM is recommended. A GPU is optional but helpful for faster model training and processing large datasets or real-time tasks. The projects are developed and tested on Windows systems.
Description
Unlock the power of image- and video-based AI in 2025 with 20+ real-time projects that guide you from foundational theory to fully functional applications. Designed for engineering and science students, STEM graduates, and professionals switching into AI, this hands-on course equips you with end-to-end computer vision skills to build a standout portfolio.
Key Highlights:
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Environment Setup & Basics: Install Python, configure VS Code, and master OpenCV operations—image I/O, color spaces, resizing, thresholding, filters, morphology, bitwise ops, and histogram equalization.
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Core & Advanced Techniques: Implement edge detection (Sobel, Canny), contour/corner/keypoint detection, texture analysis, optical flow, object tracking, segmentation, and OCR with Tesseract.
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Deep Learning Integration: Train and deploy TensorFlow/Keras models (EfficientNet-B0) alongside YOLOv7-tiny and YOLOv8 for robust detection tasks.
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GUI Development: Build interactive Tkinter interfaces to visualize live video feeds, detection results, and system dashboards.
20+ Hands-On Projects Include:
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Smart Face Attendance with face enrollment, embedding extraction, model training, and GUI integration.
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Driver Drowsiness Detection using EAR/MAR algorithms and real-time alert dashboards.
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YOLO Object & Weapon Detection pipelines for live inference and visualization.
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People Counting & Entry/Exit Tracking with configurable line-coordinate logic.
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License-Plate & Traffic Sign Recognition leveraging Roboflow annotations and custom model training.
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Intrusion & PPE Detection for workplace safety monitoring.
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Accident & Fall Detection with MQTT alert systems.
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Mask, Emotion, Age/Gender & Hand-Gesture Recognition using custom-trained vision models.
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Wildlife Identification with EfficientNet-based classification in live streams.
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Vehicle Speed Tracking using calibration and object motion analysis.
By course end, you’ll be able to:
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Develop, train, and fine-tune deep-learning vision models for diverse real-world tasks.
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Integrate CV pipelines into intuitive GUIs for live video applications.
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Execute industry-standard workflows: data annotation, training, evaluation, and deployment.
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Showcase a portfolio of 20+ complete projects to launch or advance your AI career.
Enroll today and start building your first real-time computer vision app!








