IT PARK
    Most Popular

    Canon Launches Ethernet Photo NFT Marketplace Cadabra

    Apr 10, 2025

    Five effective business models of Internet of Things

    Apr 25, 2025

    Why does the phone turn off when the remaining battery is not zero

    Apr 07, 2025

    IT PARK IT PARK

    • Home
    • Encyclopedia

      Differences between SSDs and HDDs

      May 24, 2025

      What is a discrete graphics card

      May 23, 2025

      airpods waterproof, how waterproof

      May 22, 2025

      How is fingerprint recognition achieved?

      May 21, 2025

      Do you know what 3D Mapping is?

      May 20, 2025
    • AI

      Generative AI designs unnatural proteins

      May 24, 2025

      Thousands of writers join letter urging AI industry to stop stealing books

      May 23, 2025

      Stability AI CEO: Artificial Intelligence Will Be the Biggest Bubble Ever

      May 22, 2025

      OpenAI develops new tool that attempts to explain the behavior of language models

      May 21, 2025

      Meta Quest 3 expected to support generative AI by 2024

      May 20, 2025
    • Big Data

      Business Intelligence BI Industry Knowledge - Aerospace, Satellite Internet Industry

      May 24, 2025

      What are the misconceptions in data governance in the digital age?

      May 23, 2025

      What is a data warehouse? Why a Data Warehouse?

      May 22, 2025

      What is Data Governance? Why do organizations need to do data governance?

      May 21, 2025

      Winning Business Excellence with Data Analytics

      May 20, 2025
    • CLO

      Data Protection Best Practices for Securing Cloud Hosting

      May 24, 2025

      How to Reduce the Risk of Cloud Native Applications?

      May 23, 2025

      How should the edge and the cloud work together?

      May 22, 2025

      Last-generation firewalls won't meet cloud demands

      May 21, 2025

      Healthcare Explores Cloud Computing Market: Security Concerns Raise, Multi-Party Collaboration Urgently Needed

      May 20, 2025
    • IoT

      Why sensors accumulate so much sensitive data

      May 24, 2025

      5 Reasons You Should Prototype IoT Devices

      May 23, 2025

      7 Applications of the Internet of Things in Defense and the Military

      May 22, 2025

      Self-driving cars: Opening the wave of full digital disruption in the Internet of Things era

      May 21, 2025

      Smart Supply Chain Guide

      May 20, 2025
    • Blockchain

      Understanding the principles of blockchain cross-border payments

      May 24, 2025

      Blockchain and the Postal Service

      May 23, 2025

      Blockchain insulation, the universe is open

      May 22, 2025

      Blockchain technology helps track new crown virus

      May 21, 2025

      Blockchain Foundation - What is Blockchain Technology

      May 20, 2025
    IT PARK
    Home » Encyclopedia » What kind of technology is machine vision technology?
    Encyclopedia

    What kind of technology is machine vision technology?

    Machine vision technology aims to simulate and emulate the human visual system through algorithms and models that enable computers to "see" and understand information in images or videos.
    Updated: May 11, 2025
    What kind of technology is machine vision technology?

    With the rapid development of artificial intelligence technology, machine vision technology is gradually becoming the focus of this field. So what kind of technology is machine vision technology?

         Definition of machine vision technology

    Machine vision technology is an interdisciplinary field involving computer vision and image processing, aiming to enable computers to perceive, understand and interpret the content in images or videos, simulating the function of the human visual system. It uses cameras, sensors or other image acquisition devices to capture image data and uses algorithms and models to analyze and process this data in order to extract useful information from it.

         The principle of machine vision technology

    The implementation of machine vision technology relies on a series of steps and principles, including:

    1. image acquisition: the first step in machine vision technology is to obtain the image or video data. This can be achieved by a camera, camera, scanner or other sensor device. The image can be static, such as a photograph, or dynamic, such as a video stream.

    2. Pre-processing: The acquired image data may need to be pre-processed in order to improve the effectiveness of subsequent processing steps. The pre-processing tasks include noise removal, image enhancement, image smoothing, color correction, etc. These steps help eliminate noise in the image, enhance the contrast and clarity of the image, and make the image data more suitable for subsequent feature extraction and analysis.

    3. feature extraction: feature extraction is one of the core steps of machine vision technology. In this step, the computer will extract representative features from the image for subsequent pattern recognition and classification. These features can be local or global features of the image such as shape, texture, color, edges, corner points, etc.

    4. object detection and recognition: object detection and recognition is one of the key tasks of machine vision technology. In this step, the computer uses learning algorithms and models to detect objects in the image and identify their categories by analyzing and comparing the extracted features. Commonly used algorithms include Convolutional Neural Networks, CNN, Support Vector Machines, SVM and Decision Trees, etc.

    5.Target Tracking: Target tracking is an important task in machine vision technology, which involves tracking and locating the position of a target object in a video sequence in real time. Target tracking can be achieved by motion estimation and feature matching between consecutive frames. This technology has a wide range of applications in areas such as video surveillance and autonomous driving.

    6.Image segmentation: Image segmentation is another important step in machine vision technology, which involves segmenting an image into different regions or objects. The goal of image segmentation is to separate images into regions with unique attributes or semantic information for better understanding and processing of images. Common image segmentation methods include threshold-based, edge detection, region growth, graph cut, etc.

    7.3D reconstruction: 3D reconstruction is a key task in machine vision technology, which involves reconstructing the 3D structure and geometric information of a scene from multiple images or views. By using multi-view geometry and 3D reconstruction algorithms, information such as 3D point clouds, surface models and camera poses can be extracted from images acquired from multiple perspectives.

    8. Deep learning and neural networks: Deep learning and neural networks are an important part of machine vision technology. Deep learning uses deep neural network models for tasks such as image classification, target detection, and image generation. By training neural network models with large amounts of image data, advanced features and semantic information in images can be automatically learned and extracted, thus improving the performance and accuracy of machine vision techniques.

         The application areas of machine vision technology

    Machine vision technology is widely used in many fields. In industrial manufacturing, machine vision can be used for quality control, product inspection and automated production lines. It can quickly and accurately detect product defects and abnormalities to improve production efficiency and product quality.

    In the medical field, machine vision can assist doctors in disease diagnosis, surgical navigation and image analysis, providing important support for medical decision-making. In addition, machine vision is also widely used in many fields such as traffic monitoring, security systems, driverless cars, agricultural fields and virtual reality, bringing convenience and improvement to people's life and work.

    artificial intelligence machine learning Vision
    Previous Article How does the camera work?
    Next Article How to Reduce the Risk of Cloud Native Applications?

    Related Articles

    AI

    Neural AI, the next frontier of artificial intelligence

    May 10, 2025
    AI

    AI is not a technology, but a way of thinking

    Apr 26, 2025
    AI

    Nine Uses of Generative AI in Healthcare

    Apr 18, 2025
    Most Popular

    Canon Launches Ethernet Photo NFT Marketplace Cadabra

    Apr 10, 2025

    Five effective business models of Internet of Things

    Apr 25, 2025

    Why does the phone turn off when the remaining battery is not zero

    Apr 07, 2025
    Copyright © 2025 itheroe.com. All rights reserved. User Agreement | Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.