Labelled training data in artificial intelligence (AI) is used to teach so-called 'supervised learning models'. However, such data may contain error or bias, which can impact model prediction accuracy. Thus, obtaining accurate training data is of high importance. In applications of AI, such as in classification and detection problems, raw training data is not always made available in published research. Likewise, the process of obtaining labelled data is not always documented well enough to enable reproducibility. This training data set captures a repeatability exercise in AI training data collection for a task that is difficult for humans to perform, delineating a bounding box in a two-dimensional image of a growing apical meristem in pota...
Advances in deep learning and transfer learning have paved the way for various automation classifica...
High-throughput phenotyping systems provide abundant data for statistical analysis through plant ima...
<div><p>The accuracy of machine learning tasks critically depends on high quality ground truth data....
Labelled training data in artificial intelligence (AI) is used to teach so-called 'supervised learni...
This paper considers the process of developing a method to recognize the causes of plant growth devi...
This dataset includes 27,030 images of 30 species of Chenopod from their natural habitats and is cal...
Recent progress in machine learning and deep learning has enabled the implementation of plant and cr...
To observe the growth dynamics of the canola flowers during the blooming season and estimate the har...
A lack of sufficient training data, both in terms of variety and quantity, is often the bottleneck i...
Automated identification of plants and animals has improved considerably in the last few years, in p...
LeafSnap30 is a (modified) subset of the images from the 30 species with the highest number of image...
Training deep learning models typically requires a huge amount of labeled data which is expensive to...
International audienceAutomated identification of plants and animals have improved considerably in t...
Machine learning tasks often require a significant amount of training data for the resultant network...
This article proposes a methodology for the numerical validation of image processing algorithms dedi...
Advances in deep learning and transfer learning have paved the way for various automation classifica...
High-throughput phenotyping systems provide abundant data for statistical analysis through plant ima...
<div><p>The accuracy of machine learning tasks critically depends on high quality ground truth data....
Labelled training data in artificial intelligence (AI) is used to teach so-called 'supervised learni...
This paper considers the process of developing a method to recognize the causes of plant growth devi...
This dataset includes 27,030 images of 30 species of Chenopod from their natural habitats and is cal...
Recent progress in machine learning and deep learning has enabled the implementation of plant and cr...
To observe the growth dynamics of the canola flowers during the blooming season and estimate the har...
A lack of sufficient training data, both in terms of variety and quantity, is often the bottleneck i...
Automated identification of plants and animals has improved considerably in the last few years, in p...
LeafSnap30 is a (modified) subset of the images from the 30 species with the highest number of image...
Training deep learning models typically requires a huge amount of labeled data which is expensive to...
International audienceAutomated identification of plants and animals have improved considerably in t...
Machine learning tasks often require a significant amount of training data for the resultant network...
This article proposes a methodology for the numerical validation of image processing algorithms dedi...
Advances in deep learning and transfer learning have paved the way for various automation classifica...
High-throughput phenotyping systems provide abundant data for statistical analysis through plant ima...
<div><p>The accuracy of machine learning tasks critically depends on high quality ground truth data....