Udemy – Deep Learning for Object Detection with Python and PyTorch 2023-7 – Downloadly

Description

Deep Learning for Object Detection with Python and PyTorch course. Deep Learning for Object Recognition with Python and PyTorch course. Are you ready to enter the wonderful world of object recognition using deep learning? In our comprehensive course “Deep Learning for Object Detection with Python and PyTorch”, we walk you through the essential concepts and techniques needed to detect, classify, and locate objects in images. Object detection has a wide range of potential real-world applications across many fields. Object recognition is used for self-driving vehicles to perceive and understand their surroundings. It helps identify and track pedestrians, vehicles, traffic signs, traffic lights, and other objects on the road. Object detection is also used for surveillance and security using drones to identify and track suspicious activity, intruders, and objects of interest. Object detection is used for traffic monitoring, helmet and license plate recognition, player tracking, defect detection, industrial uses, and much more. With the powerful combination of Python programming and PyTorch deep learning framework, you will explore advanced algorithms and architectures such as R-CNN, Fast RCNN and Faster R-CNN. During the course, you will gain an in-depth understanding of Convolutional Neural Networks (CNN) and their role in object recognition. You will learn how to use pre-trained models, how to tune them to detect objects using Detectron2 library developed by Facebook AI Research (FAIR). This course covers the entire pipeline with practical experience of object recognition using deep learning with Python and PyTorch as follows:

  • Learning to Recognize Objects with Python and Python Coding
  • Learning object recognition using deep learning models
  • Introduction to Convolutional Neural Networks (CNN)
  • Learn RCNN, Fast RCNN, Faster RCNN and Mask RCNN architectures
  • Perform object detection with Fast RCNN and Faster RCNN
  • Introducing Detectron2 by Facebook AI Research (FAIR)
  • Object detection prototype with Detectron2 model
  • Explore custom object detection datasets with annotations
  • Object detection on custom datasets using deep learning
  • Training, testing, evaluating your object recognition model, and visualizing the results
  • Perform object sample segmentation at the pixel level using Mask RCNN
  • Perform object instance partitioning on custom datasets with Pytorch and Python

At the end of this course, you will have the knowledge and skills needed to start applying deep learning to object recognition in your work or research. Whether you are a computer vision engineer, data scientist, or developer, this course is a great way to take your understanding of deep learning to the next level. Let’s start this exciting journey of deep learning for object recognition with Python and PyTorch.

What you will learn in the Deep Learning for Object Detection with Python and PyTorch course

  • Learning to Recognize Objects with Python and Python Coding

  • Learning object recognition using deep learning models

  • Introduction to Convolutional Neural Networks (CNN)

  • Learn RCNN, Fast RCNN, Faster RCNN and Mask RCNN architectures

  • Perform object detection with Fast RCNN and Faster RCNN

  • Introducing Detectron2 by Facebook AI Research (FAIR)

  • Object detection prototype with Detectron2 model

  • Explore custom object detection datasets with annotations

  • Object detection on custom datasets using deep learning

  • Training, testing, evaluating your object recognition model, and visualizing the results

  • Perform object sample segmentation at the pixel level using Mask RCNN

  • Perform object instance partitioning on custom datasets with Pytorch and Python

This course is suitable for those who

  • This course is designed for a wide range of students and professionals, including machine learning engineers, deep learning engineers, data scientists, computer vision engineers, and researchers who want to learn how to use PyTorch to build and train deep learning models for object recognition
  • Overall, this course is for those who want to learn how to use deep learning to extract meaning from visual data and gain a deeper understanding of the theory and practical applications of object detection using Python and PyTorch.

Deep Learning Course Specification for Object Detection with Python and PyTorch

Course Title Deep Learning for Object Detection with Python and PyTorch

Deep Learning for Object Detection with Python and PyTorch Deep Learning for Object Detection with Python and PyTorch

Deep Learning for Object Detection with Python and PyTorch course prerequisites

  • This course teaches Object Detection using Deep Learning with Python and PyTorch by following the complete pipeline from Zero to Hero
  • No prior knowledge of semantic segmentation is assumed. Everything will be covered by practical training
  • A Google Gmail account is required to get started with Google Colab for writing Python code

Course Images

Deep Learning for Object Detection with Python and PyTorch

Sample video of the course

installation Guide

After extract, watch with your favorite player.

Subtitles: none

Quality: 720p

download link

Part 1 – Download 1 GB

Download Part 2 – 187 MB

File Password: www.downloadly.ir

size

1.1GB

free download software latest version