On scene-adapted illumination techniques for industrial inspection

Author(s):  
Robin Gruna ◽  
Jurgen Beyerer
2000 ◽  
Vol 6 (S2) ◽  
pp. 1170-1171
Author(s):  
M. C. Henk ◽  
H. Silverman

LSU began introducing a prototype SCOPE-ON-A-ROPE (SOAR) to selected teachers in Louisiana and Tennessee three years ago as part of our K-12 outreach activities. It proved to be an invaluable aid to all K-12 classrooms as well as to college classrooms or laboratories in several disciplines. The SOAR is extremely easy to use in the normal classroom setting, but can also introduce sophisticated concepts usually possible only through complicated microscopy exercises with specialized instrumentation.The professional microscopist who occasionally teaches students how to use microscopes can only begin to appreciate the position of classroom teachers who are routinely faced with inadequate, insufficient microscopes for classes of 20- 30 students at a time. This SOAR, inspired by industrial inspection devices, aids the teacher in introducing valuable concepts in microscopy and scale while easily serving the functions of many different microscopes and accessories. It is a comfortably hand-held device that can be used capably even by a five-year-old to provide excellent,


2020 ◽  
Vol 10 (23) ◽  
pp. 8660
Author(s):  
Lu Wang ◽  
Dongkai Zhang ◽  
Jiahao Guo ◽  
Yuexing Han

Detecting image anomalies automatically in industrial scenarios can improve economic efficiency, but the scarcity of anomalous samples increases the challenge of the task. Recently, autoencoder has been widely used in image anomaly detection without using anomalous images during training. However, it is hard to determine the proper dimensionality of the latent space, and it often leads to unwanted reconstructions of the anomalous parts. To solve this problem, we propose a novel method based on the autoencoder. In this method, the latent space of the autoencoder is estimated using a discrete probability model. With the estimated probability model, the anomalous components in the latent space can be well excluded and undesirable reconstruction of the anomalous parts can be avoided. Specifically, we first adopt VQ-VAE as the reconstruction model to get a discrete latent space of normal samples. Then, PixelSail, a deep autoregressive model, is used to estimate the probability model of the discrete latent space. In the detection stage, the autoregressive model will determine the parts that deviate from the normal distribution in the input latent space. Then, the deviation code will be resampled from the normal distribution and decoded to yield a restored image, which is closest to the anomaly input. The anomaly is then detected by comparing the difference between the restored image and the anomaly image. Our proposed method is evaluated on the high-resolution industrial inspection image datasets MVTec AD which consist of 15 categories. The results show that the AUROC of the model improves by 15% over autoencoder and also yields competitive performance compared with state-of-the-art methods.


Sensor Review ◽  
2002 ◽  
Vol 22 (2) ◽  
pp. 106-112 ◽  
Author(s):  
Christine Connolly

Author(s):  
Harold Stanislaw

Two hundred forty subjects working alone and in pairs performed three different versions of a task similar to industrial inspection: a rating task and spatial and temporal two-alternative forced-choice (2AFC) tasks. Performance was worse on the rating task than on the 2AFC tasks, and the spatial and temporal 2AFC tasks were performed equally well. These results could signify that performance is impaired more by demands made on long-term memory than by demands made on perception and sensory memory, or that asking subjects to compare items is fundamentally different from, and easier than, asking subjects to judge items in absolute terms. Individual differences in performance were marked, but performance was inconsistent across different versions of the inspection task. When subjects worked in pairs, performance was comparable to that obtained by requiring items to pass two inspections by individual subjects. However, a single inspection by subject pairs required less time than two inspections by individual subjects. The practical implications of these findings are discussed.


1975 ◽  
Vol 19 (3) ◽  
pp. 305-309
Author(s):  
Malireddy R. Reddy

Variables affecting Dynamic Visual Acuity are important in the design of industrial inspection tasks. The objective of the present study was to investigate the effects of target-background contrast, target size, and linear velocity upon DVA. Photographed block landolt rings were placed on white and grey backgrounds to produce ten uniformly graded contrast levels between target and background. These were then mounted on standard 35 mm photographic slide frames (2 in. x 2 in.). Gaps in the rings were oriented toward the corners of the frames. For a given viewing time, an increase in linear velocity resulted in a marked decrease in DVA ability. Also, for a given linear velocity, an increase in viewing time resulted in an increase in DVA ability. Contrast levels and display width also affected performance.


Author(s):  
T.M. Sobh ◽  
J. Owen ◽  
C. Jaynes ◽  
M. Dekhil ◽  
T.C. Henderson

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