Uncertainty Driven Sampling to Handle Intra-class Imbalance Part Segmentation in Wheat

Allbwn ymchwil: Pennod mewn Llyfr/Adroddiad/Trafodion CynhadleddTrafodion Cynhadledd (ISBN)

Crynodeb

We introduce a novel method to address intra-class imbalance in 3D point cloud segmentation of wheat, focusing on distinguishing between ear and non-ear parts. Variability in plant structure, influenced by factors such as curvature and shape, often leads to data imbalance which complicates segmentation tasks. Our approach utilizes Monte Carlo Dropout to identify and prioritize uncertain samples at the end of each training epoch, employing uncertainty-driven sampling to select samples with the lowest confidence. These samples undergo augmentation through scaling and leaf crossover techniques, enhancing their representation in the training set. Our comparative evaluations demonstrate that this strategy significantly improves the mean Intersection over Union (mIoU) and segmentation accuracy, thereby increasing model robustness for complex 3D plant structures.

Iaith wreiddiolSaesneg
Teitl6th IEEE International Conference on Image Processing, Applications and Systems, IPAS 2025 - Proceedings
CyhoeddwrIEEE Press
ISBN (Electronig)9798331506520
Dynodwyr Gwrthrych Digidol (DOIs)
StatwsCyhoeddwyd - 21 Maw 2025
Digwyddiad6th IEEE International Conference on Image Processing, Applications and Systems, IPAS 2025 - Lyon, Ffrainc
Hyd: 09 Ion 202511 Ion 2025

Cyfres gyhoeddiadau

Enw6th IEEE International Conference on Image Processing, Applications and Systems, IPAS 2025 - Proceedings

Cynhadledd

Cynhadledd6th IEEE International Conference on Image Processing, Applications and Systems, IPAS 2025
Gwlad/TiriogaethFfrainc
DinasLyon
Cyfnod09 Ion 202511 Ion 2025

Ôl bys

Gweld gwybodaeth am bynciau ymchwil 'Uncertainty Driven Sampling to Handle Intra-class Imbalance Part Segmentation in Wheat'. Gyda’i gilydd, maen nhw’n ffurfio ôl bys unigryw.

Dyfynnu hyn