2022
DOI: 10.3390/s22041596
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The Challenge of Data Annotation in Deep Learning—A Case Study on Whole Plant Corn Silage

Abstract: Recent advances in computer vision are primarily driven by the usage of deep learning, which is known to require large amounts of data, and creating datasets for this purpose is not a trivial task. Larger benchmark datasets often have detailed processes with multiple stages and users with different roles during annotation. However, this can be difficult to implement in smaller projects where resources can be limited. Therefore, in this work we present our processes for creating an image dataset for kernel frag… Show more

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Cited by 22 publications
(13 citation statements)
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“…4 -trend lines). Compared to the image processing methods used in this study (OpenCV and WS), the annotation quality is an important issue when performing object detection analysis [105]. This observation underscores the importance of accurate data collection and annotation to ensure reliable and robust results in object detection studies.…”
Section: Plant Detection Accuracymentioning
confidence: 94%
“…4 -trend lines). Compared to the image processing methods used in this study (OpenCV and WS), the annotation quality is an important issue when performing object detection analysis [105]. This observation underscores the importance of accurate data collection and annotation to ensure reliable and robust results in object detection studies.…”
Section: Plant Detection Accuracymentioning
confidence: 94%
“…This leads scientists to train their models on unlabeled data sets, instead of annotated and important data. 6668 Furthermore, ML approaches require much data, however, there are not enough. 69…”
Section: Related Workmentioning
confidence: 99%
“…This leads scientists to train their models on unlabeled data sets, instead of annotated and important data. [66][67][68] Furthermore, ML approaches require much data, however, there are not enough. 69 Besides, the majority of these studies focus on the relative risk of SARS-CoV-2 and its transmission such as investigating molecular dynamics simulations, reproducing the viral infection, measuring the effects of drug treatment, identifying potential drug candidates, spreading of the virus through people, and so forth.…”
Section: Related Workmentioning
confidence: 99%
“…First, it is difficult to collect sufficient medical image datasets. Second, few annotated medical datasets are available because they require a laborious annotation process to be performed by the trained experts and are restricted by legal issues associated with public access to private medical information 6 , 7 . Because supervised DL generally relies on large amounts of data that have been accurately annotated by experts, the data preparation phase of medical imaging studies can be challenging.…”
Section: Introductionmentioning
confidence: 99%