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In: Forum Bildverarbeitung 2024, KIT Scientific Publishing

Deep learning-based localisation of combine harvester components in thermal images

Hanna Senke , Dennis Sprute , Ulrich Büker und Holger Flatt,
Nov 2024

It is crucial to identify defective machine components in production to ensure quality. Some components generate heat when defective, so automating the inspection process with a
thermal imaging camera can provide qualitative measurements. This work aims to use computer vision methods to locate these components in thermal images. Since there is currently no
comparison of object detection and semantic segmentation algorithms for this use case, this study compares different architectures with the goal of localising these components for further
defect inspection. Moreover, as there are currently no datasets for this use case, this study contributes a novel annotated dataset of thermal images of combine harvester components. The differ-
ent algorithms are evaluated based on the quality of their predictions and their suitability for further defect inspection. As semantic segmentation and object detection cannot be directly
compared with each other, custom weighted metrics are used. The architectures evaluated include RetinaNet, YOLOV8 Detector, DeepLabV3+, and SegFormer. Based on the experimental
results, semantic segmentation outperforms object detection regarding the use case, and the SegFormer architecture achieves the best results with a weighted MeanIOU of 0.853.

Literatur Beschaffung: Forum Bildverarbeitung 2024, KIT Scientific Publishing
@inproceedings{3011,
author= {Senke, Hanna and Sprute, Dennis and Büker, Ulrich and Flatt, Holger},
title= {Deep learning-based localisation of combine harvester components in thermal images},
booktitle= {Forum Bildverarbeitung 2024},
year= {2024},
editor= {},
volume= {},
series= {},
pages= {71-82},
address= {},
month= {Nov},
organisation= {},
publisher= {KIT Scientific Publishing},
note= {},
}