PST: Plant segmentation transformer for 3D point clouds of rapeseed plants at the podding stage
Ruiming Du, Zhihong Ma, Pengyao Xie, Yong He, Haiyan Cen

TL;DR
This paper introduces PST, a novel deep learning transformer network designed for high-resolution 3D plant point cloud segmentation, significantly improving accuracy in identifying complex rapeseed plant structures.
Contribution
The study presents a new transformer-based network architecture with a dynamic voxel encoder and dual attention blocks tailored for detailed plant segmentation tasks.
Findings
PST achieved over 93% mean IoU in semantic segmentation.
PST outperformed state-of-the-art methods in accuracy metrics.
The method effectively captures complex plant morphological traits.
Abstract
Segmentation of plant point clouds to obtain high-precise morphological traits is essential for plant phenotyping. Although the fast development of deep learning has boosted much research on segmentation of plant point clouds, previous studies mainly focus on the hard voxelization-based or down-sampling-based methods, which are limited to segmenting simple plant organs. Segmentation of complex plant point clouds with a high spatial resolution still remains challenging. In this study, we proposed a deep learning network plant segmentation transformer (PST) to achieve the semantic and instance segmentation of rapeseed plants point clouds acquired by handheld laser scanning (HLS) with the high spatial resolution, which can characterize the tiny siliques as the main traits targeted. PST is composed of: (i) a dynamic voxel feature encoder (DVFE) to aggregate the point features with the raw…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing and LiDAR Applications · Horticultural and Viticultural Research
