Autoplay
Autocomplete
Previous Lesson
Complete and Continue
The Computer Vision Bootcamp
Introduction
Introduction (5:31)
What We're Building (4:32)
Exercise: Meet Your Classmates and Instructor
Course Resources
ZTM Plugin + Understanding Your Video Player
Set Your Learning Streak Goal
Understanding Vision Transformers
Vision Transformers vs Convolutional Neural Networks (5:28)
Quadratic Operations (9:42)
Introduction to ViTs and Joint Training with Embeddings (10:48)
Understanding Attention Mechanisms, Brief Summary (5:18)
Understanding the Full ViT Pipeline (17:13)
Let's Have Some Fun (+ More Resources)
Understanding Meta's SAM (Segment Anything Model)
Introduction to Prompt Encoders for SAM (4:56)
SAM AutoPrompt Mode (15:36)
SAM Manual Click Mode (7:54)
ViT Embeddings inside SAM (4:54)
Calculating Attention Score for Vision Transformers in SAM (16:41)
How SAM is Trained (8:04)
Calculating Prompt Self Attention for SAM (4:07)
Prompt Image Cross Attention (7:35)
Image to Prompt Cross Attention (5:56)
(Optional) Finishing SAM Example Part 1 (8:49)
(Optional) Finishing SAM Example Part 2 (7:33)
Finishing
Unlimited Updates
Setting up Our AWS Environment
Creating our SagemakerAI Domain (0:59)
Starting Domain and Understanding Pricing (3:14)
Installing Libraries (3:50)
Stopping Instances and Servers (0:37)
Course Check-In
Setting Up Open Source Models Like Meta's SAM
Downloading the SAM Model from Meta (3:23)
Updating IAM Permissions (1:55)
Importing Libraries (5:00)
Understanding how we use Rekognition with SAM (12:28)
Defining Helper Functions (12:36)
Clarification Regarding Helper Functions (1:35)
Rekognition Detection and Filtering (12:26)
Initialise SAM Model from S3 (10:15)
Main Processing Function Part 1 (14:33)
Main Processing Function Part 2 (3:50)
Running the Main Processing Cell (4:53)
Implement a New Life System
Visualizing Our Outputs
Visualizing Rekognition Detections (7:49)
Visualize All SAM Masks (9:27)
Visualizing Match Quality IOU Scores Part 1 (10:22)
Visualizing Match Quality IOU Scores Part 2 (9:29)
Visualizing Image Segmentations with Bounding Boxes (11:03)
Visualizing Masks and Labels Without Bounding Boxes (6:30)
Visualizing Segementations in Black and White Masks (4:38)
Exercise: Imposter Syndrome (2:55)
Saving Results to S3
Saving Metadata to S3 (9:07)
Save Images to S3 (10:11)
Saving Individual Masks to S3 (8:55)
Testing & Setup
Adding a GPU Server to our Notebook and AWS Quotas (5:23)
Testing Our Full Pipeline (8:21)
Minor Corrections (13:10)
Productionizing + Cleanup (6:38)
Where To Go From Here?
Thank You! (1:17)
Review This Course!
Become An Alumni
Learning Guideline
ZTM Events Every Month
LinkedIn Endorsements
Saving Individual Masks to S3
This lecture is available exclusively for ZTM Academy members.
If you're already a member,
you'll need to login
.
Join ZTM To Unlock All Lectures