Download Deep Learning for Computer Vision with TensorFlow 2 torrent - GloDLS
Login
Username:
Password:
Remember Me:
[Signup]
[Recover Account]
Friends
Angie Torrents
Friendly Site

Pirateiro
Friendly site

Free Courses Online
Friendly site

ETTV
Friendly site

ProStyleX
Friendly site

KaranPC
Friendly site

P2PDL.com
Friendly site

OneHack
Friendly site

IGGGames
Friendly site

HTML tutorial
Torrent Details For "Deep Learning for Computer Vision with TensorFlow 2"

Deep Learning for Computer Vision with TensorFlow 2

To download this torrent, you need a BitTorrent client: Vuze or BTGuard
Download this torrent
Download using Magnet Link

Health:
Seeds: 2
Leechers: 30
Completed:
Last Checked: 20-11-2021 03:32:00

Uploader Reputation points : 4420





Write a Review for the Uploader:   10   Say Thanks with one good review:
Share on Facebook


Details
Name:Deep Learning for Computer Vision with TensorFlow 2
Description:

Description

This course is focused in the application of Deep Learning for image classification and object detection. This course originally was designed in TensorFlow version 1.X but now all codes were updated with TensorFlow version 2.X, mainly by the use of Google Colaboratory(Colab).

If you dont have an available GPU in your local system or you want to experiment in an environment without any previous installation or setup, dont worry you can follow the course smootly because all codes were optimized in Google Colab.

The course starts with a concise review of the main concepts in Deep Learning, because this course focused in the application of Deep Learning in the computer vision field.

The main computer vision tasks covered in this course are image classification and object detection.

After reviewing the deep learning theory you will enter in the study of Convolutional Neural Networks (ConvNets) for image classification studying the following concepts and algorithms:

– Image Fundamentals

– Loading images in TensorFlow

– The building blocks of ConvNets such as:

  Convolution Operation,

  Filters,

  Batch Normalization,

  ReLU Function,

  DropOut,

  Pooling Layers,

  Dilation,

  Shared Weights,

  Image Augmentation, etc

– Different ConvNets architectures such as:

  LeNet5,

  AlexNet,

  VGG-16,

  ResNet

  Inception.

– Many practical applications using famous datasets such as:

  Covid19 on X-Ray images,

  CIFAR10,

  BCCD,

  COCO dataset,

  Open Images Dataset V6 through Voxel FiftyOne,

  ROBOFLOW,

 You will also learn how to work and collect image data through web scraping with

  Python and Selenium.

Finally in the Object Detection chapter we will explore the theory and the application using Transfer Learning approach using the lastest state of the art algorithms with practical applications. Some of the content in this Chapter is the following:

– Theoretical background for Selective Search algorith,

– Theoretical background for R-CNN, Fast R-CNN and Faster R-CNN,

– Faster R-CNN application on BCCD dataset for detecting blood cells,

– Theoretical background for Single Shot Detector (SSD),

– Training your customs datasets using different models with TensorFlow Object Detection API

– Object Detection on images, videos and livestreaming,

– YOLOv2 theory and practical application in a custom dataset (R2D2 dataset)

– YOLOv3 practical application in a custom dataset (R2D2 and C3PO dataset)

– YOLOv4 theory and practical application in a custom dataset (R2D2 and C3PO dataset)

Finally you will learn how to construct and train your own dataset through GPU computing running Yolo v2, Yolo v3 and the latest Yolo v4 using Google Colab.


You will find in this course a consice review of the theory with intuitive concepts of the algorithms, and you will be able to put in practice your knowledge with many practical examples using your own datasets.

This course is very well qualified by the students, some of the inspiring comments are:

* Stefan Lankester (5 stars): Thanks Carlos for this valuable training. Good explanation with broad treatment of the subject object recognition in images and video. Showing interesting examples and references to the needed resources. Good explanation about which versions of different python packages should be used for successful results.

* Shihab (5 stars): It was a really amazing course. Must recommend for everyone.

* Estanislau de Sena Filho (5 stars): Excellent course. Excellent explanation. It’s the best machine learning course for computer vision. I recommend it

* Areej AI Medinah (5 stars): The course  is really good for computer vision. It consists of all material required to put computer vision projects in practice. After building a great understanding through theory, it also gives hands-on experience.

* Dave Roberto (5 stars): The course is completely worth it. The teacher clearly conveys the concepts and it is clear that he understands them very well (there is not the same feeling with other courses). The schemes he uses are not the usual ones you can see in other courses, but they really help much better to illustrate and understand. I would give eight stars to the course, but the maximum is five. It’s one of the few Udemy courses that has left me really satisfied.

The student has the opportunity to get a feedback from the instructor through Q&A forums, by email: [email protected] or by Twitter: @AILearningCQ
Who this course is for:

   Professionals who wants to learn advanced applications on Computer Vision using deep learning concepts.
   It’s an intermediate level course not intended for begineers.

Requirements

   Machine Learning concepts, Linear Algebra, Python, TensorFlow, Keras and OpenCV

Last Updated 10/2021
YouTube Video:
Category:Tutorials
Language:English  English
Total Size:7.32 GB
Info Hash:0C429B58C08C84E14676E324F4A7DD552CF9AC3C
Added By:tutsnode Verified UploaderVIP
Date Added:2021-11-20 11:31:46
Torrent Status:Torrent Verified


Ratings:Not Yet Rated (Log in to rate it)


Tracker:
udp://open.stealth.si:80/announce

This Torrent also has backup trackers
URLSeedersLeechersCompleted
udp://open.stealth.si:80/announce000
udp://tracker.tiny-vps.com:6969/announce000
udp://fasttracker.foreverpirates.co:6969/announce000
udp://tracker.opentrackr.org:1337/announce000
udp://explodie.org:6969/announce000
udp://tracker.cyberia.is:6969/announce000
udp://ipv4.tracker.harry.lu:80/announce000
udp://tracker.uw0.xyz:6969/announce000
udp://opentracker.i2p.rocks:6969/announce000
udp://tracker.birkenwald.de:6969/announce000
udp://tracker.torrent.eu.org:451/announce000
udp://tracker.moeking.me:6969/announce000
udp://tracker.dler.org:6969/announce000
udp://9.rarbg.me:2970/announce000


File List: 





Comments
No comments still posted