2020
DOI: 10.1007/978-3-030-65414-6_23
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Unsupervised Domain Adaptation for Plant Organ Counting

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Cited by 18 publications
(17 citation statements)
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“…In computer vision, attempting to alter training images to more closely match a target domain is common, as seen in Zhang et al, where they present a method for using domain adaptation for the detection of different fruits using a CycleGAN [18] demonstrating transformation between different fruits for a detection task. Domain adaptation has proven popular across most of the main phenotyping tasks such as leaf counting via regression as shown in [19] and wheat head detection as shown in [3] and in our own work.…”
Section: Domain Adaptationmentioning
confidence: 92%
See 1 more Smart Citation
“…In computer vision, attempting to alter training images to more closely match a target domain is common, as seen in Zhang et al, where they present a method for using domain adaptation for the detection of different fruits using a CycleGAN [18] demonstrating transformation between different fruits for a detection task. Domain adaptation has proven popular across most of the main phenotyping tasks such as leaf counting via regression as shown in [19] and wheat head detection as shown in [3] and in our own work.…”
Section: Domain Adaptationmentioning
confidence: 92%
“…In problem spaces such as plant phenotyping, this kind of approach is highly relevant owing to the high diversity of different plants and plant varieties; even within the same species, it is common to see a domain shift between different datasets of the same species due to imaging location and setup, time of year, the age of the plant, etc. In the past 5 years especially, synthetic to real domain adaptation has become popular [2,3] since automatically generated data are cheaper than the collection of real images and do not need manual annotation. Increased popularization of adversarial approaches has contributed to this increase in popularity, with many GAN-based models being used for domain adaptation.…”
Section: Introductionmentioning
confidence: 99%
“…And the image-level methods (Zhu et al, 2017;Wang et al, 2019; manipulate the styles of images, e.g., hues, illuminations, textures to make the images in two different domains closer. Some of the UDA methods are proposed to address the domain gap for plant counting (Giuffrida et al, 2019;Ayalew et al, 2020). However, existing UDA methods for plant counting directly adopt the generic feature-level UDA methods.…”
Section: Related Workmentioning
confidence: 99%
“…By contrast, UDA for object counting, especially for plant counting, has been less studied. To our knowledge, existing UDA methods (Giuffrida et al, 2019;Ayalew et al, 2020) applied to plant counting are often direct adoptions of generic UDA ideas without considering the particularities of domain gaps in plant counting. In fact, different from crowd counting or car counting, domain gaps in plant counting are much more diverse.…”
Section: Introductionmentioning
confidence: 99%
“…Phenotyping is an important task for monitoring plants, similar to object tracking and identification. Ayalew et al [16] present a method to use an unsupervised domain adaptation network to adapt the meticulously pre-labeled Computer Vision Problems in Plant Phenotyping (CVPPP) dataset [17], [18] to other plant and image domains. The data consists of single plants, their leaves, and a point map of leaf centers.…”
Section: Related Workmentioning
confidence: 99%