National Repository of Grey Literature 4 records found  Search took 0.00 seconds. 
Vehicle Make and Model Recognition in Image
Hrivňák, Marek ; Hradiš, Michal (referee) ; Herout, Adam (advisor)
This thesis focuses on training convolutional neural network for vehicle recognition in image, preparation of training data and improvement of classification accuracy. Solution focuses on effect of using 2D bounding box and data augmentation for better recognition accuracy. In this thesis, I also elaborate the comparison with papers using 3D bounding box and showing, my method approaches in some cases even outperforms method using 3D bounding box. BoxCars116k data set is used, which is freely available and collected by the GRAPH@FIT research group. In order to support the main data set, I also collected some vehicle images. As a result of the analysis, it is observed that accuracy of vehicle recognition increased 8% points in comparison with other convolutional neural networks without the proposed modifications. As part of my thesis I also performed several experiments, which show effect of different factors on classification accuracy.
Analysis of Classification Methods
Juríček, Jakub ; Zendulka, Jaroslav (referee) ; Burgetová, Ivana (advisor)
This work deals with the classification methods used in the knowledge discovery from data process and discusses the possibilities of their validation and comparison. Through experiments, the work focuses on the analysis of four selected methods: Naive Bayes classificator, decision tree, neural network and SVM. Factors influencing basic characteristics such as training speed, classification speed, accuracy are examined. A part of the thesis is a desktop application, which is a tool for training, testing and validation of individual methods. Eleven reference data sets are selected for experimental purposes. At the end of this work experimental results of comparison and observed characteristics of classification methods are summarized.
Vehicle Make and Model Recognition in Image
Hrivňák, Marek ; Hradiš, Michal (referee) ; Herout, Adam (advisor)
This thesis focuses on training convolutional neural network for vehicle recognition in image, preparation of training data and improvement of classification accuracy. Solution focuses on effect of using 2D bounding box and data augmentation for better recognition accuracy. In this thesis, I also elaborate the comparison with papers using 3D bounding box and showing, my method approaches in some cases even outperforms method using 3D bounding box. BoxCars116k data set is used, which is freely available and collected by the GRAPH@FIT research group. In order to support the main data set, I also collected some vehicle images. As a result of the analysis, it is observed that accuracy of vehicle recognition increased 8% points in comparison with other convolutional neural networks without the proposed modifications. As part of my thesis I also performed several experiments, which show effect of different factors on classification accuracy.
Analysis of Classification Methods
Juríček, Jakub ; Zendulka, Jaroslav (referee) ; Burgetová, Ivana (advisor)
This work deals with the classification methods used in the knowledge discovery from data process and discusses the possibilities of their validation and comparison. Through experiments, the work focuses on the analysis of four selected methods: Naive Bayes classificator, decision tree, neural network and SVM. Factors influencing basic characteristics such as training speed, classification speed, accuracy are examined. A part of the thesis is a desktop application, which is a tool for training, testing and validation of individual methods. Eleven reference data sets are selected for experimental purposes. At the end of this work experimental results of comparison and observed characteristics of classification methods are summarized.

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