Add more related work
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@ -1904,6 +1904,42 @@ that the same classification scores can be achieved on plants in the
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field with messy and noisy backgrounds as well as illumination changes
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and so forth.
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\textcite{venal2019} combine a standard \gls{cnn} architecture with a
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\gls{svm} for classification. The \gls{cnn} acts as a feature
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extractor and instead of using the last fully-connected layers of an
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off-the-shelf \gls{cnn}, they replace them with a \gls{svm}. They use
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this classifier to determine which biotic or abiotic stresses soybeans
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suffer from. Their data set consists of $65184$ $64$ by $64$ RGB
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images of which around $40000$ were used for training and $6000$ for
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testing. All images show a close-up of a soybean leaf. Their \gls{cnn}
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architecture makes use of three inception modules (see
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section~\ref{sssec:theory-googlenet}) with \gls{se} blocks and
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\gls{bn} layers in-between. Their model achieves an average
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$\mathrm{F}_1$-score of 97\% and an average accuracy of 97.11\% on the
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test set. Overall, the hybrid structure of their model is promising,
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but it is not clear why only using the \gls{cnn} as a feature
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extractor provides better results than using it also for
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classification.
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\textcite{aversano2022} perform water stress classification on images
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of tomato crops obtained with a \gls{uav}. Their data set consists of
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$6600$ thermal and $6600$ optimal images which have been segmented
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using spectral clustering. They use two VGG-19 networks (see
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section~\ref{sssec:theory-vggnet}) which extract features from the
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thermal (network one) and optical (network two) images. Both feature
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extractors are merged together via a fully-connected and softmax layer
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to predict one of three classes: water excess, well-watered and water
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deficit. The authors select three hyperparameters (image resolution,
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optimization algorithm and batch size) and optimize them for
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accuracy. The best classifier works with a resolution of
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\qty{512}{px}, \gls{sgd} and a batch size of $32$. This configuration
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achieves an accuracy of 80.5\% and an $\mathrm{F}_1$-score of 79.4\%
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on the validation set. To test whether the optical or thermal images
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are more relevant for classification, the authors conduct an ablation
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study. The results show that the network with the optical images alone
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achieves an $\mathrm{F}_1$-score of 74\% while only using the thermal
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images gives an $\mathrm{F}_1$-score of 62\%.
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A significant problem in the detection of water stress is posed by the
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evolution of indicators across time. Since physiological features such
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as leaf wilting progress as time passes, the additional time domain
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