Written technical contribution

Signed-off-by: Jim Martens <github@2martens.de>
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\subsection*{Technical Contribution} \subsection*{Technical Contribution}
Technical contribution includes all contributions
that are not necessarily new in the scientific sense but are a
meaningful engineering contribution in itself.
There is no available source code for the work of
Miller et al\cite{Miller2018}, which necessitates a re-implementation
of their work by myself. The contribution is the fine-tuning of
an SSD model pre-trained on ImageNet\cite{Deng2009}, extended by
dropout layers, to the SceneNet RGB-D data set using MS COCO classes
as the known classes for SSD.
As MS COCO classes are more general than SceneNet RGB-D classes this
also requires a mapping from one set of classes to the other.
This entire contribution is technical and only re-implements
what Miller et al have already done. It is expected that the
evaluation of the results using this self-trained model will
reproduce the results of Miller et al.
For GPND source code is available but only for MNIST and using
PyTorch. Therefore, the source code has to be transcoded from
PyTorch to Tensorflow. Furthermore, it must be made compatible
with the SceneNet RGB-D as the architecture is tailored to MNIST.
The mapping from SceneNet RGB-D to MS COCO applies here as well and
can therefore be considered a separate contribution. A fine-tuned
SSD is required also but this time without added dropout layers.
Additionally, it is necessary to train the auto-encoder for every
known class separately.
To summarise it in a list, the following separate deliverables
are contributed:
\begin{itemize}
\item source code for dropout sampling compatible with Tensorflow
\item source code for GPND compatible with Tensorflow
\item mapping from SceneNet RGB-D classes to MS COCO classes
\item vanilla SSD model fine-tuned on SceneNet RGB-D
\item dropout SSD model fine-tuned on SceneNet RGB-D
\item auto-encoder model trained separately on every MS COCO class
\end{itemize}
\chapter{Thesis as a project} \chapter{Thesis as a project}
After introducing the topic and the general task ahead, this part of After introducing the topic and the general task ahead, this part of