Národní úložiště šedé literatury Nalezeno 6 záznamů.  Hledání trvalo 0.00 vteřin. 
Mobilní aplikace pro objednávání drobných služeb
Vican, Peter ; Orság, Filip (oponent) ; Semerád, Lukáš (vedoucí práce)
Táto bakalárska práca sa zaoberá vývojom mobilnej aplikácie pre objednávanie drobných služieb. Aplikácia je vyvíjaná pre mobilnú platformu Android. Mobilná aplikácia je písaná podľa najnovších trendov pomocou jazyka Kotlin a cloudového riešenia Google Firebase. V prvej časti sú definované špecifikácie s návrhom mobilnej aplikácie, druhej časti je predstavená platforma Android a posledná časť je venovaná samotnej implementácii a testovaniu.
Detection and Classification of Damage in Fingerprint Images Using Neural Nets
Vican, Peter ; Rydlo, Štěpán (oponent) ; Kanich, Ondřej (vedoucí práce)
The aim of the diploma thesis is to study and propose improvement of the current convolutional neural network for the classification and detection of fingerprint disease. An improvement of the current convolutional neural network is the change of library for the algorithm of learning, detecting and classifying fingerprint damage. Other improvements are to change  the convolutional neural network model and a change in the activation function. At the same time, preprocessing using the Gabor filter will be added. Another change is in the area of thresholding. Next, there will be a change in general-purpose algorithms that will simplify the work for expanding database creation, the learning process itself, the classification and detection process, and the network testing process. At the same time, this network will be expanded with a new prediction and classification. Specifically the damage caused by eczema, psoriasis, pressure and moisture. The improved convolutional neural network is implemented by PyTorch. The network detects which part of the fingerprint is damaged and draws this part into the fingerprint. At the same time, the type of disease or imprint damage is classified during detection. Synthetic fingerprints are used in network training and are supplemented by real fingerprints.
Detection and Classification of Damage in Fingerprint Images Using Neural Nets
Vican, Peter ; Drahanský, Martin (oponent) ; Kanich, Ondřej (vedoucí práce)
The aim of this diploma thesis is to study and design experimental improvement of the convolutional neural network for disease detection. Another goal is to extend the classifier with a new type of detection. he new type of detection is damage fingerprint by pressure. The experimentally improved convolutional network is implemented by PyTorch. The network detects which part of the fingerprint is damaged and draws this part into the fingerprint. Synthetic fingerprints are used when training the net. Real fingerprints are added to the synthetic fingerprints.
Detection and Classification of Damage in Fingerprint Images Using Neural Nets
Vican, Peter ; Rydlo, Štěpán (oponent) ; Kanich, Ondřej (vedoucí práce)
The aim of the diploma thesis is to study and propose improvement of the current convolutional neural network for the classification and detection of fingerprint disease. An improvement of the current convolutional neural network is the change of library for the algorithm of learning, detecting and classifying fingerprint damage. Other improvements are to change  the convolutional neural network model and a change in the activation function. At the same time, preprocessing using the Gabor filter will be added. Another change is in the area of thresholding. Next, there will be a change in general-purpose algorithms that will simplify the work for expanding database creation, the learning process itself, the classification and detection process, and the network testing process. At the same time, this network will be expanded with a new prediction and classification. Specifically the damage caused by eczema, psoriasis, pressure and moisture. The improved convolutional neural network is implemented by PyTorch. The network detects which part of the fingerprint is damaged and draws this part into the fingerprint. At the same time, the type of disease or imprint damage is classified during detection. Synthetic fingerprints are used in network training and are supplemented by real fingerprints.
Detection and Classification of Damage in Fingerprint Images Using Neural Nets
Vican, Peter ; Drahanský, Martin (oponent) ; Kanich, Ondřej (vedoucí práce)
The aim of this diploma thesis is to study and design experimental improvement of the convolutional neural network for disease detection. Another goal is to extend the classifier with a new type of detection. he new type of detection is damage fingerprint by pressure. The experimentally improved convolutional network is implemented by PyTorch. The network detects which part of the fingerprint is damaged and draws this part into the fingerprint. Synthetic fingerprints are used when training the net. Real fingerprints are added to the synthetic fingerprints.
Mobilní aplikace pro objednávání drobných služeb
Vican, Peter ; Orság, Filip (oponent) ; Semerád, Lukáš (vedoucí práce)
Táto bakalárska práca sa zaoberá vývojom mobilnej aplikácie pre objednávanie drobných služieb. Aplikácia je vyvíjaná pre mobilnú platformu Android. Mobilná aplikácia je písaná podľa najnovších trendov pomocou jazyka Kotlin a cloudového riešenia Google Firebase. V prvej časti sú definované špecifikácie s návrhom mobilnej aplikácie, druhej časti je predstavená platforma Android a posledná časť je venovaná samotnej implementácii a testovaniu.

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4 Vican, Pavol
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