National Repository of Grey Literature 4 records found  Search took 0.01 seconds. 
Image segmentation using machine learning
Matějek, Libor ; Frýza, Tomáš (referee) ; Bravenec, Tomáš (advisor)
This work deals with machine learning and its application in the field of image segmentation and object recognition. The thesis describes the basic terminology related to machine learning and data related to it. It also focuses on the biological nature of the neuron and its technological applications. The basic types of neural networks and the key convolutional neural network for image processing are described. The work also presents the used architectures of convolutional neural networks. Then follow the methods of image preprocessing before the convolutional network R-CNN. Subsequently, some of the datasets suitable for image recognition are analyzed. The implementation is then realized in Python with support for the PyTorch framework from Facebook.
Video summarization with deep neural networks
Matějek, Libor ; Slanina, Martin (referee) ; Frýza, Tomáš (advisor)
The work deals with machine learning and application in the field of video summarization. The thesis includes a basic introduction to neural networks and related data. It also describes the basic architectures of neural networks. The greatest emphasis is placed on convolutional neural networks, which are pivotal in the field of image processing. A further approximation is subject to the mathematical vector reduction of PCA and the Euclidean distance description. The theoretical part closes with information about K Means clustering. The implementation is then realized using the Tensorflow framework with API from Keras.
Human Body Segmentation Using R-Cnn
Matějek, Libor
The article deals with basic concepts in the sector of image processing using neural networks.It describes the basic principles and methods of object recognition and image segmentationusing neural network architectures based on R-CNN architecture. Specifically the work focuses onhuman body segmentation from static images, resulting in individual segments in the output maskcorresponding to each limb of a human body
Image segmentation using machine learning
Matějek, Libor ; Frýza, Tomáš (referee) ; Bravenec, Tomáš (advisor)
This work deals with machine learning and its application in the field of image segmentation and object recognition. The thesis describes the basic terminology related to machine learning and data related to it. It also focuses on the biological nature of the neuron and its technological applications. The basic types of neural networks and the key convolutional neural network for image processing are described. The work also presents the used architectures of convolutional neural networks. Then follow the methods of image preprocessing before the convolutional network R-CNN. Subsequently, some of the datasets suitable for image recognition are analyzed. The implementation is then realized in Python with support for the PyTorch framework from Facebook.

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