A Novel WaveInst-based Network for Tree Trunk Structure Extraction and Pattern Analysis in Forest Inventory
Chenyang Fan, Xujie Zhu, Taige Luo, Sheng Xu, Zhulin Chen, Hongxin, Yang

TL;DR
This paper introduces a WaveInst-based neural network that leverages wavelet transforms for precise tree trunk and branch structure extraction from images, enhancing forestry analysis and phenotypic research.
Contribution
It proposes a novel WaveInst instance segmentation framework with wavelet transforms for multi-scale edge enhancement, improving tree structure extraction accuracy.
Findings
Achieved a mean average precision of 49.6 for mature trees.
Surpassed existing methods by 9.9 in structure extraction accuracy.
Enabled direct estimation of tree parameters from 2D images.
Abstract
The pattern analysis of tree structure holds significant scientific value for genetic breeding and forestry management. The current trunk and branch extraction technologies are mainly LiDAR-based or UAV-based. The former approaches obtain high-precision 3D data, but its equipment cost is high and the three-dimensional (3D) data processing is complex. The latter approaches efficiently capture canopy information, but they miss the 3-D structure of trees. In order to deal with the branch information extraction from the complex background interference and occlusion, this work proposes a novel WaveInst instance segmentation framework, involving a discrete wavelet transform, to enhance multi-scale edge information for accurately improving tree structure extraction. Experimental results of the proposed model show superior performance on SynthTree43k, CaneTree100, Urban Street and our…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing and Land Use
