add some dataset infos
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@ -98,6 +98,12 @@ Labeling datasets is commonly seen as an expensive task and wants to be avoided
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Thats why there is a machine-learning field called Semi-Supervised learning.
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The general approach is to train a model that predicts Pseudo-Labels which then can be used to train the main model.
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The goal of this paper is a video action recognition.
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Given are approximately 10 seconds long videos which should be classified.
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In this paper datasets with 400 and 101 different classes are used.
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The papers approach is tested with 1\% and 10\% of known labels of all data points.
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The used model depends on the exact usecase but in this case a 3D-ResNet50 and 3D-ResNet18 are used.
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\section{Semi-Supervised learning}\label{sec:semi-supervised-learning}
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In traditional supervised learning we have a labeled dataset.
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Each datapoint is associated with a corresponding target label.
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@ -208,7 +214,7 @@ And as a backbone model a 3D-ResNet18 and 3D-ResNet50 are used.
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\end{figure}
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\section{Further schemes}\label{sec:further-schemes}
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How the pseudo-labels are generated my impact the overall performance.
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How the pseudo-labels are generated may impact the overall performance.
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In this paper the pseudo-labels are obtained by the cross-model approach.
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But there might be other strategies.
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For example:
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