Skip to content
  • Our Work
    • Fields
      • Cardiology
      • ENT
      • Gastro
      • Orthopedics
      • Ophthalmology
      • Pulmonology
      • Surgical Intelligence
      • Surgical Robotics
      • Urology
      • Other
    • Modalities
      • Endoscopy
      • Medical Segmentation
      • Microscopy
      • Ultrasound
  • Success Stories
  • Insights
    • Magazine
    • Upcoming Events
    • Webinars
    • Meetups
    • News
    • Blog
  • The company
    • About us
    • Careers
Menu
  • Our Work
    • Fields
      • Cardiology
      • ENT
      • Gastro
      • Orthopedics
      • Ophthalmology
      • Pulmonology
      • Surgical Intelligence
      • Surgical Robotics
      • Urology
      • Other
    • Modalities
      • Endoscopy
      • Medical Segmentation
      • Microscopy
      • Ultrasound
  • Success Stories
  • Insights
    • Magazine
    • Upcoming Events
    • Webinars
    • Meetups
    • News
    • Blog
  • The company
    • About us
    • Careers
Contact

Industrial Vision Systems

During the past few decades, industrial automation of manufacturing processes has taken a great leap forward. Specifically, the increased quality of yield is due, in large part, to the rapid development of non-destructive inspection vision systems and their integration in the manufacturing process. For example, the analysis of sensory information coming from x-ray, thermal and light cameras provides means of inspecting, characterizing and detecting flaws in manufactured goods for small test batches and large-scale production line: this makes the system less prone to error and spares excess human labor and costs.

Industrial Vision System

Industrial Vision Systems by RSIP Vision

RSIP Vision’s nondestructive testing techniques and industrial vision systems provide a means of detecting and examining a variety of surface flaws, such as corrosion, contamination, surface finish, and surface discontinuities on joints, bonds and cracks. For example, algorithms developed by RSIP vision’s engineers are currently successfully integrated in automatic detection of defects in ceramic tiles on the production line. We utilize cutting edge algorithms that learn the geometrical properties of each tile, and apply this knowledge to classify fault and assess the severity. The software can spot minute defects while taking into account the wide-range of faults a tile might have, such as low contrast stains, defective printing and broken corners. This vision system prevents defective tiles from reaching final production stages, reducing the cost to the manufacturer while increasing channel satisfaction.

Another prominent examples is the non-destructive inspection during manufacturing of printed circuit boards (PCBs). Owing to the increase of component density, higher demands are placed on errors tolerance during the PCB printing. To this end, the requirements from inspection systems have been placed in tight error margins, for which RSIP Vision has designed algorithms to detect and characterize fault at high precision, using combination of pattern recognition, machine learning and computer vision techniques. Algorithmic solutions to inspection problems increases the affordability of non-destructive vision-based inspection system, owing to the advanced techniques allowing to extract more information from an image than was previously possible. RSIP Vision’s machine vision inspection systems can also be used for other purposes: to ensure that all components of a circuit board have been assembled correctly; to verify that packaging is filled as it should be and that shapes, patterns and alignment are correct; and to check that there are no defects in a silicon chip mask before it is used in production.

To learn more about RSIP Visions project in the field of inspection, please visit our Optical Inspection project page. To contact our consultants, please visit our contact page.

Share

Share on linkedin
Share on twitter
Share on facebook

Related Content

Percutaneous Nephrolithotomy

PCNL – Planning and real-time navigation

Prostate Tumor Segmentation

Implementing AI to Improve PI-RADS Scoring

RAS Navigation

Tissue Sparing in Robotic Assisted Orthopedic Surgeries

Procedural Planning in urology

Procedural Planning in Urology

C Arm X-Ray Machine Scanner

Radiation Reduction in Robotic Assisted Surgeries (RAS) Using AI

Visible spectrum color

Hyperspectral Imaging for Robotic Assisted Surgery

Percutaneous Nephrolithotomy

PCNL – Planning and real-time navigation

Prostate Tumor Segmentation

Implementing AI to Improve PI-RADS Scoring

RAS Navigation

Tissue Sparing in Robotic Assisted Orthopedic Surgeries

Procedural Planning in urology

Procedural Planning in Urology

C Arm X-Ray Machine Scanner

Radiation Reduction in Robotic Assisted Surgeries (RAS) Using AI

Visible spectrum color

Hyperspectral Imaging for Robotic Assisted Surgery

Show all

RSIP Vision

Field-tested software solutions and custom R&D, to power your next medical products with innovative AI and image analysis capabilities.

Read more about us

Get in touch

Please fill the following form and our experts will be happy to reply to you soon

Recent News

PR – Intra-op Virtual Measurements in Laparoscopic and Robotic-Assisted Surgeries

PR – Non-Invasive Planning of Coronary Intervention

PR – Bladder Panorama Generator and Sparse Reconstruction Tool

PR – Registration Module for Orthopedic Surgery

All news
Upcoming Events
Stay informed for our next events
Subscribe to Our Magazines

Subscribe now and receive the Computer Vision News Magazine every month to your mailbox

 
Subscribe for free
Follow us
Linkedin Twitter Facebook Youtube

contact@rsipvision.com

Terms of Use

Privacy Policy

© All rights reserved to RSIP Vision 2021

Created by Shmulik

  • Our Work
    • title-1
      • Ophthalmology
      • Uncategorized
      • Ophthalmology
      • Pulmonology
      • Cardiology
      • Orthopedics
    • Title-2
      • Orthopedics
  • Success Stories
  • Insights
  • The company