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Ho to Build AI & Machine Learning Recognition Application

Optical Character Recognition (OCR) enables you to detect text within your images, along with golang
Course from Udemy
 43 students enrolled
 en
In the end of my course you will learn how to use machine learning in text dection with go. You used golang application in which you organized the application logic into multiple packages to easily maintain the application.
You will use azure cognetive services for Computer Vision
You will use azure cognetive services for Face
You will use google Detect Text (OCR)

The Vision API can detect and extract text from images. There are two annotation features that support optical character recognition:

TEXT_DETECTION detects and extracts text from any image. For example, a photograph might contain a street sign or traffic sign. The JSON includes the entire extracted string, as well as individual words, and their bounding boxes.


DOCUMENT_TEXT_DETECTION also extracts text from an image, but the response is optimized for dense text and documents. The JSON includes page, block, paragraph, word, and break information.

Computer Vision

Extract rich information from images to categorize and process visual data—and perform machine-assisted moderation of images to help curate your services.

Analyze an image

This feature returns information about visual content found in an image. Use tagging, domain-specific models, and descriptions in four languages to identify content and label it with confidence. Use Object Detection to get location of thousands of objects within an image. Apply the adult/racy settings to help you detect potential adult content. Identify image types and color schemes in pictures.

Recognize celebrities and landmarks

Recognize more than 200,000 celebrities from business, politics, sports and entertainment, as well as 9,000 natural and manmade landmarks from around the world.

Face

Detect and compare human faces

Organize images into groups based on similarities

Identify previously tagged people in images

Run locally on-premises or in the cloud

Face verification

Check the likelihood that two faces belong to the same person. The API will return a confidence score about how likely it is that the two faces belong to one person.

Face detection

Detect one or more human faces in an image and get back face rectangles for where in the image the faces are, along with face attributes which contain machine learning-based predictions of facial features. The face attribute features available are: Age, Emotion, Gender, Pose, Smile, and Facial Hair along with 27 landmarks for each face in the image.

Emotion recognition

The Face API now integrates emotion recognition, returning the confidence across a set of emotions for each face in the image such as anger, contempt, disgust, fear, happiness, neutral, sadness, and surprise. These emotions are understood to be cross-culturally and universally communicated with particular facial expressions.

Ho to Build AI & Machine Learning Recognition Application
$ 94.99
per course
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