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2. Recovery of superquadric parameters from depth images using deep learningTim Oblak, 2020, magistrsko delo Ključne besede: superquadrics, parametric models, reconstruction, 3D, deep learning, convolutional neural networks, CNN, parameter recovery Celotno besedilo (datoteka, 8,69 MB) |
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4. Summarization of web commentsKatarina Milačić, 2020, magistrsko delo Ključne besede: word embeddings, cross-lingual embeddings, low-resource languages, abstractive summarization, extractive summarization, deep neural networks, language models, transfer learning Celotno besedilo (datoteka, 1,02 MB) |
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