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Computer Vision: AI-Powered Image Understanding

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COM SCI X 450.45

This course provides a comprehensive exploration of computer vision and deep learning, equipping students with Python proficiency, image processing skills, and advanced neural network techniques to tackle real-world applications in healthcare, security, robotics, and automation through AI-driven solutions.

Duration
As few as 11 weeks
Units
4.0
Current Formats
Online
Cost
Starting at $1,095.00

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What you can learn.

Apply Python programming to build image processing pipelines and deep learning models for computer vision applications
Implement foundational vision AI tools such as object detection, image classification, and segmentation models
Create data visualizations for image-based analytics and model performance evaluation

About This Course

Dive into concepts and techniques of computer vision and deep learning. Students will develop proficiency in Python programming, with special emphasis on image processing, feature extraction, and neural network architectures designed for visual data. The course covers real-world applications including object detection, image segmentation, facial recognition, autonomous navigation, and medical imaging analysis. Students will explore advanced techniques such as CNNs, vision transformers (ViTs), GANs, and feature maps, applying deep learning to solve complex visual challenges. Learners will master data preprocessing for images, model development, evaluation metrics (IoU, precision-recall), and the integration of AI-driven solutions into industries such as healthcare, security, robotics, and smart automation.

Winter 2026 Schedule

Date
Details
Format
 
-
This section has no set meeting times.
Instructor:
REG#
405864
Fee:
$1,095.00
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Notes
Enrollment limited; early enrollment advised. Enrollment deadline: January 11th, 2026.
Deadline
Refunds only available from November 03, 2025 to January 18, 2026
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