scholarly journals Workshop Pembuatan Mini Konveyor Untuk Proses Quality Control Berbasis Computer Vision

2021 ◽  
Vol 3 (2) ◽  
pp. 96-103
Author(s):  
Chaerur Rozikin ◽  
Ultach Enri ◽  
Aries Suharso

Seiring berjalannya waktu, teknologi yang ada juga berkembang, perkembangan teknologi akan membantu manusia dalam kesehariannya. Otomatisasi adalah suatu teknologi yang terkait dengan mekanik, elektronik, dan komputer berdasarkan sistem untuk beroperasi dan untuk mengontrol produksi. Otomatisasi dapat digunakan dalam proses Quality Control dengan menggunakan Konveyor dengan Sensor hc05. Dengan sistem otomasi ini, proses Quality Control akan lebih cepat dan mengurangi tenaga kerja manusia di dalamnya. Cara kerjanya adalah dengan menyensor botol di dalam kotak untuk melihat jumlah botol dalam kotak sesuai dengan angka yang telah ditentukan.Kata Kunci: Kualitas Kontrol, Otomasi, Sistem Komputer Vision.

Author(s):  
Kartik Gupta ◽  
Cindy Grimm ◽  
Burak Sencer ◽  
Ravi Balasubramanian

Abstract This paper presents a computer vision system for evaluating the quality of deburring and edge breaking on aluminum and steel blocks. This technique produces both quantitative (size) and qualitative (quality) measures of chamfering operation from images taken with an off-the-shelf camera. We demonstrate that the proposed computer vision system can detect edge chamfering geometry within a 1–2mm range. The proposed technique does not require precise calibration of the camera to the part nor specialized hardware beyond a macro lens. Off-the-shelf components and a CAD model of the original part geometry are used for calibration. We also demonstrate the effectiveness of the proposed technique on edge breaking quality control.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Núria Banús ◽  
Imma Boada ◽  
Pau Xiberta ◽  
Pol Toldrà ◽  
Narcís Bustins

AbstractQuality control is a key process designed to ensure that only products satisfying the defined quality requirements reach the end consumer or the next step in a production line. In the food industry, in the packaging step, there are many products that are still evaluated by human operators. To automate the process and improve efficiency and effectiveness, computer vision and artificial intelligence techniques can be applied. This automation is challenging since specific strategies designed according to the application scenario are required. Focusing on the quality control of the sealing and closure of matrix-shaped thermoforming food packages, the aim of the article is to propose a deep-learning-based solution designed to automatically perform the quality control while satisfying production cadence and ensuring 100% inline inspection of the products. Particularly, the designed computer vision system and the image-based criteria defined to determine when a product has to be accepted or rejected are presented. In addition, the vision control software is described with special emphasis on the different convolutional neural network (CNN) architectures that have been considered (ResNet18, ResNet50, Vgg19 and DenseNet161, non-pre-trained and pre-trained on ImageNet) and on the specifically designed dataset. To test the solution, different experiments are carried out in the laboratory and also in a real scenario, concluding that the proposed CNN-based approach improves the efficiency and security of the quality control process. Optimal results are obtained with the pre-trained DenseNet161, achieving false positive rates that range from 0.03 to 0.30% and false negative rates that range from 0 to 0.07%, with a rejection rate between 0.64 and 5.09% of production, and being able to detect at least 99.93% of the sealing defects that occur in any production. The modular design of our solution as well as the provided description allow it to adapt to similar scenarios and to new deep-learning models to prevent the arrival of faulty products to end consumers by removing them from the automated production line.


Author(s):  
Zixuan Yang ◽  
Huaiyuan Teng ◽  
Jeremy Goldhawk ◽  
Ilya Kovalenko ◽  
Efe C. Balta ◽  
...  

Abstract Dimensional metrology is an integral part of quality control in manufacturing systems. Most existing manufacturing systems utilize contact-based metrology, which is time consuming and not flexible to design changes. There have been recent applications of computer vision for performing dimensional metrology in manufacturing systems. Existing computer vision metrology techniques need repeated calibration of the system and are not utilized with data analysis methods to improve decision making. In this work, we propose a robust non-contact computer vision metrology pipeline integrated with Computer Aided Design (CAD) that has the capacity to enable control of smart manufacturing systems. The pipeline uses CAD data to extract nominal dimensions and tolerances. The dimensions are compared to the measured ones, computed using camera images and computer vision algorithms. A quality check module evaluates if the measurements are within admissible bounds and informs a central controller. If a part does not meet a tolerance, the central controller changes a program running on a specific machine to ensure that parts meet the necessary specifications. Results from an implementation of the proposed pipeline on a manufacturing research testbed are given at the end.


Food Control ◽  
1992 ◽  
Vol 3 (1) ◽  
pp. 62
Author(s):  
D.M. Gibson

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