Computer vision classification
Classification 🎯
- Categorizes an image into predefined classes.
- Provides a yes/no answer (belongs to a class or not).
Object Detection 🔍
- Draws a bounding box around detected objects.
- Uses sub-classification for each detected region.
- Improved by YOLO for real-time, single-shot detection.
Segmentation ✂️
- No bounding boxes, instead, it creates masks based on object shape.
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Types of Segmentation:
- Image Segmentation 🖼: Uses abstract contour-based masking.
- Semantic Segmentation 🌍: Assigns class-wise masks to all objects.
- Instance Segmentation 🔢: Identifies multiple instances of the same class separately.
- Panoptic Segmentation 🏷: Combines semantic and instance segmentation, identifying both classes and individual instances.
TLDR : In Deep Learning and Image Processing
- Classification 📌: Used in tasks like spam detection, medical diagnosis, and species identification.
- Object Detection 🎯: Applied in self-driving cars, surveillance, and facial recognition.
- Segmentation ✂️: Essential for medical imaging (tumor detection), autonomous vehicles, and augmented reality.
These methods help AI "see" and understand images more effectively! 🚀
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