The pitfalls of transfer learning in computer vision for agriculture

Autor(en): Autz, J.
Mishra, S.K.
Herrmann, L.
Hertzberg, J. 
Herausgeber: Gandorfer, M.
Hoffmann, C.
El Benni, N.
Cockburn, M.
Anken, T.
Floto, H.
Stichwörter: Common process; Computer vision applications; Machine Learning; Machine-learning; Pre-training; Precision Farming; Precision-farming; Prior experience; Reuse; Sugar beets; Textures, Color and textures; Transfer learning; Transfer Learning Computer Vision; Transfer learning computer vision, Computer vision
Erscheinungsdatum: 2022
Herausgeber: Gesellschaft fur Informatik (GI)
Enthalten in: Lecture Notes in Informatics (LNI), Proceedings - Series of the Gesellschaft fur Informatik (GI)
Band: P-317
Startseite: 51
Seitenende: 56
Zusammenfassung: 
Computer vision applications based on modern AI methods are becoming increasingly important in agriculture, supporting and automating common processes. These applications are usually based on well-established architectures and pre-trained models. However, our prior experience has shown that applying the concept of transfer learning to AI tasks in agriculture repeatedly resulted in systematic issues. The structure of agricultural images, containing objects similar in shape, color and texture, makes the reuse of well-established applications more challenging. To give a more detailed insight into the expected challenges, we trained two different networks, which are well-established in the literature: Mask R-CNN and YOLOv5 [He18; Jo21] and investigated them in two different learning setups. First, we applied the concept of transfer learning to these models by pre-training each on the COCO dataset and subsequently continued expanding the available target set with classes of the sugar beets dataset [Ch17]. In the second setup, we skipped pre-training and only trained the models on the given agriculture dataset. Furthermore, we describe the reasons for the results in more detail and highlight possible causes for the identified differences. Finally, the different performances of the networks allowed us to improve on best practices for the agricultural domain and give some advice for future computer vision tasks in this area. © 2022 Gesellschaft fur Informatik (GI). All rights reserved.
Beschreibung: 
Conference of 42. Jahrestagung 2022 der Gesellschaft fur Informatik in der Land-, Forst- und Ernahrungswirtschaft: Was bedeutet Kunstliche Intelligenz fur die Agrar- und Ernahrungswirtschaft, GIL 2022 - 42nd Annual Conference 2022 of the Society for Information Technology in Agriculture, Forestry and Food Industry: What does Artificial Intelligence mean for the Agricultural and Food industry, GIL 2022 ; Conference Date: 21 February 2022 Through 22 February 2022; Conference Code:178642
ISBN: 9783885797111
ISSN: 1617-5468
Externe URL: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85128187351&partnerID=40&md5=a6adb1f3d60d1470afa290527b427593

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