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Titlebook: Dependable Computer Systems and Networks; Proceedings of the E Wojciech Zamojski,Jacek Mazurkiewicz,Janusz Kacprz Conference proceedings 20

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楼主: 弄碎
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Line Segmentation of Handwritten Documents Using Direct Tensor Voting,tion process can make access to them easier. However, even digitized, they can not be searched, so the important task is to convert them to the computer-readable form. A lot of the records are written by hand and the handwriting recognition process must be performed on them. The initial stage of thi
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Regression Models Evaluation of Short-Term Traffic Flow Prediction,med to analyze in detail the feasibility and degree of fit of different variants of the regression model: linear, polynomial, trigonometric, polynomial-trigonometric and based on the Random Forest algorithm regression. A number of studies were performed, evaluating the different model generations. A
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Hammering Test on a Concrete Wall Using Neural Network,ent depths in a concrete wall, it is necessary to provide a generic learning model that can be used to find flacking at different depths. This paper shows that a learning model for flacking at one depth is valid for flacking at another depth in a case. However, it is only valid for some samples. Sou
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Detection of Oversized Objects in a Video Stream Using an Image Classification with Deep Neural Netencast mining process. Using this method, an oversized rock detection system was developed on a conveyor belt in an opencast mine. Deep neural networks were successfully used to classify a frame containing a dangerous rock, e.g. ResNet, as well as VGG16. A detection algorithm based on a moving avera
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