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Computer vision course using deep learning

Computer vision course using deep learning
Computer vision course using deep learning

Computer vision course using deep learning

Advanced and Basic Computer Vision

What you’ll learn

Computer vision course using deep learning

  • Advanced and Basic Computer Vision
  • A synthetic neural network
  • CNN, Keras Tools, and Keras API for Image Processing

Requirements

  • Python

Description

Computer vision is a branch of deep learning that focuses on analyzing and comprehending visual data. It helps teach computers how to “see” and how to use visual information to do visual tasks.

In order to translate visual input into computer vision models, features and contextual data need to be discovered during training. This lets models figure out what the pictures mean and use those meanings to come up with ideas or take action.

Image processing is the process of changing or editing photos to produce a new result. It could include boosting resolution, enhancing brightness or contrast, obscuring delicate information, or cropping. Image processing is different from computer vision in that you don’t always have to find information to do image processing.

Artificial neural networks are the foundation of the machine learning technique known as “Deep Learning,” which is used to teach computers new skills.

In fields like computer vision, speech recognition, natural language processing, machine translation, bioinformatics, drug design, medical image analysis, material inspection, and board game programs, deep-learning architectures like deep neural networks, recurrent neural networks, and convolutional neural networks have been used successfully.

Artificial neural networks (ANNs) are modeled after the dispersed communication and information processing nodes seen in biological systems. ANNs vary from biological brains in several ways.

The most widely used deep learning framework is Keras. Best practices are used by Keras to reduce cognitive strain. It gives you APIs, reduces the number of user interactions needed for most use cases, and gives you clear, actionable error messages.

Who this course is for:

  • Python programmers, aspirants to machine learning, and aspirants to deep learning

Courser

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