scholarly journals Efficient Evolutionary Learning Algorithm for Real-Time Embedded Vision Applications

Electronics ◽  
2019 ◽  
Vol 8 (11) ◽  
pp. 1367 ◽  
Author(s):  
Zhonghua Guo ◽  
Meng Zhang ◽  
Dah-Jye Lee

This paper reports the development of an efficient evolutionary learning algorithm designed specifically for real-time embedded visual inspection applications. The proposed evolutionary learning algorithm constructs image features as a series of image transforms for image classification and is suitable for resource-limited systems. This algorithm requires only a small number of images and time for training. It does not depend on handcrafted features or manual tuning of parameters and is generalized to be versatile for visual inspection applications. This allows the system to be configured on the fly for different applications and by an operator without extensive experience. An embedded vision system, equipped with an ARM processor running Linux, is capable of performing at roughly one hundred 640 × 480 frames per second which is more than adequate for real-time visual inspection applications. As example applications, three image datasets were created to test the performance of this algorithm. The first dataset was used to demonstrate the suitability of the algorithm for visual inspection automation applications. This experiment combined two applications to make it a more challenging test. One application was for separating fertilized and unfertilized eggs. The other one was for detecting two common defects on the eggshell. Two other datasets were created for road condition classification and pavement quality evaluation. The proposed algorithm was 100% for fertilized egg detection and 98.6% for eggshell quality inspection for a combined 99.1% accuracy. It had an accuracy of 92% for the road condition classification and 100% for pavement quality evaluation.

2015 ◽  
Vol 16 (6) ◽  
pp. 3482-3495 ◽  
Author(s):  
Cosimo Patruno ◽  
Roberto Marani ◽  
Massimiliano Nitti ◽  
Tiziana D'Orazio ◽  
Ettore Stella

Author(s):  
Chawki El Zant ◽  
Quentin Charrier ◽  
Khaled Benfriha ◽  
Patrick Le Men

AbstractThe level of industrial performance is a vital issue for any company wishing to develop and acquire more market share. This article presents a novel approach to integrate intelligent visual inspection into “MES” control systems in order to gain performance. The idea is to adapt an intelligent image processing system via in-situ cameras to monitor the production system. The images are thus analyzed in real time via machine learning interpreting the visualized scene and interacting with some features of the MES system, such as maintenance, quality control, security, operations, etc. This novel technological brick, combined with the flexibility of production, contributes to optimizing the system in terms of autonomy and responsiveness to detect anomalies, already encountered, or even new ones. This smart visual inspection system is considered as a Cyber Physical System CPS brick integrated to the manufacturing system which will be considered an edge computing node in the final architecture of the platform. This smart CPS represents the 1st level of calculation and analysis in real time due to embedded intelligence. Cloud computing will be a perspective for us, which will represent the 2nd level of computation, in deferred time, in order to analyze the new anomalies encountered and identify potential solutions to integrate into MES. Ultimately, this approach strengthens the robustness of the control systems and increases the overall performance of industrial production.


2012 ◽  
Vol 59 (2) ◽  
pp. 1038-1049 ◽  
Author(s):  
Feng Lin ◽  
Xiangxu Dong ◽  
Ben M. Chen ◽  
Kai-Yew Lum ◽  
Tong H. Lee

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