Multi-frame data-driven methods bear the promise that aggregating multiple observations leads to better estimates of target quantities than a single (still) observation. This thesis examines how data-driven approaches such as deep neural networks should be constructed to improve over single-frame-based counterparts. Besides algorithmic changes, as for example in the design of artificial neural network architectures or the algorithm itself, such an examination is inextricably linked with the consideration of the synthesis of synthetic training data in meaningful size (even if no annotations are available) and quality (if real ground-truth acquisition is not possible), which capture all temporal effects with high fidelity. We start wi...
The reconstruction and novel view synthesis of dynamic scenes recently gained increased attention. A...
The recent resurgence of neural networks, termed "Deep Learning", has led to a reinvigoration of the...
Over the last decades, machine learning revolutionised our daily lives from recommendation systems t...
Multi-frame data-driven methods bear the promise that aggregating multiple observations leads to bet...
Convolutional networks reach top quality in pixel-level object tracking but require a large amount o...
Recent advances in computer vision tasks have been driven by high-capacity deep neural networks, par...
El present projecte planteja l'estudi comprensiu i extens per a la tasca de predicció de fotogrames ...
The use of Deep Neural Networks with their increased representational power has allowed for great pr...
In this report, we will give a brief overview of selected deep learning technologies in the interest...
In this project, we propose an action prediction and a data generation pipeline. While, the former m...
Since the phenomenal success of deep neural networks (DNNs) on image classification, the research co...
Neural rendering is a new and developing field where computer graphics and deep learning techniques ...
The ability of deep-learning methods to excel in computer vision highly depends on the amount of ann...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
Les tâches de vision artificielle telles que la reconnaissance d’objets demeurent irrésolues à ce jou...
The reconstruction and novel view synthesis of dynamic scenes recently gained increased attention. A...
The recent resurgence of neural networks, termed "Deep Learning", has led to a reinvigoration of the...
Over the last decades, machine learning revolutionised our daily lives from recommendation systems t...
Multi-frame data-driven methods bear the promise that aggregating multiple observations leads to bet...
Convolutional networks reach top quality in pixel-level object tracking but require a large amount o...
Recent advances in computer vision tasks have been driven by high-capacity deep neural networks, par...
El present projecte planteja l'estudi comprensiu i extens per a la tasca de predicció de fotogrames ...
The use of Deep Neural Networks with their increased representational power has allowed for great pr...
In this report, we will give a brief overview of selected deep learning technologies in the interest...
In this project, we propose an action prediction and a data generation pipeline. While, the former m...
Since the phenomenal success of deep neural networks (DNNs) on image classification, the research co...
Neural rendering is a new and developing field where computer graphics and deep learning techniques ...
The ability of deep-learning methods to excel in computer vision highly depends on the amount of ann...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
Les tâches de vision artificielle telles que la reconnaissance d’objets demeurent irrésolues à ce jou...
The reconstruction and novel view synthesis of dynamic scenes recently gained increased attention. A...
The recent resurgence of neural networks, termed "Deep Learning", has led to a reinvigoration of the...
Over the last decades, machine learning revolutionised our daily lives from recommendation systems t...