Method for assessing rodent infestation in plateau based on SegFormer.

Rodent infestation is a critical factor contributing to grassland degradation, which significantly negatively affects grassland ecosystems. To assess rodent infestation on the plateau, there is an urgent need for a scientifically sound and effective method to detect the distribution of rodent burrow...

Full description

Saved in:
Bibliographic Details
Main Authors: Xiangjie Huang, Guoying Zhang, Chunmei Li, Yaosheng Han, Qing Dong, Hao Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0325738
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849709754503397376
author Xiangjie Huang
Guoying Zhang
Chunmei Li
Yaosheng Han
Qing Dong
Hao Wang
author_facet Xiangjie Huang
Guoying Zhang
Chunmei Li
Yaosheng Han
Qing Dong
Hao Wang
author_sort Xiangjie Huang
collection DOAJ
description Rodent infestation is a critical factor contributing to grassland degradation, which significantly negatively affects grassland ecosystems. To assess rodent infestation on the plateau, there is an urgent need for a scientifically sound and effective method to detect the distribution of rodent burrows. In response, this study proposes a semantic segmentation approach utilizing the SegFormer model to detect rodent infestation in highland areas. First, we used an unmanned aerial vehicle to collect video data from the plateau and constructed a rodent burrows dataset after processing and precise labeling. Second, to address the issue of SegFormer's suboptimal performance in segmenting small targets within complex backgrounds and among similar objects, we implemented targeted modifications to enhance its effectiveness for this task. Incorporating the efficient multi-scale attention (EMA) mechanism into SegFormer's encoder improves the model's capacity to capture global contextual information. Meanwhile, integrating the multi-kernel convolution feed-forward network (MCFN) into the decoder optimizes the problem of detail recovery and fusion of multi-scale features. We name this method EM-SegFormer (Efficient Multi-scale SegFormer). The experimental results demonstrate that the method achieves relatively good performance on the rodent burrows dataset. This study introduces a novel approach for plateau rodent infestation detection and offers reliable technical support for grassland restoration and management.
format Article
id doaj-art-ac214973367a496984bd2d3cf047eee4
institution DOAJ
issn 1932-6203
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj-art-ac214973367a496984bd2d3cf047eee42025-08-20T03:15:09ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01206e032573810.1371/journal.pone.0325738Method for assessing rodent infestation in plateau based on SegFormer.Xiangjie HuangGuoying ZhangChunmei LiYaosheng HanQing DongHao WangRodent infestation is a critical factor contributing to grassland degradation, which significantly negatively affects grassland ecosystems. To assess rodent infestation on the plateau, there is an urgent need for a scientifically sound and effective method to detect the distribution of rodent burrows. In response, this study proposes a semantic segmentation approach utilizing the SegFormer model to detect rodent infestation in highland areas. First, we used an unmanned aerial vehicle to collect video data from the plateau and constructed a rodent burrows dataset after processing and precise labeling. Second, to address the issue of SegFormer's suboptimal performance in segmenting small targets within complex backgrounds and among similar objects, we implemented targeted modifications to enhance its effectiveness for this task. Incorporating the efficient multi-scale attention (EMA) mechanism into SegFormer's encoder improves the model's capacity to capture global contextual information. Meanwhile, integrating the multi-kernel convolution feed-forward network (MCFN) into the decoder optimizes the problem of detail recovery and fusion of multi-scale features. We name this method EM-SegFormer (Efficient Multi-scale SegFormer). The experimental results demonstrate that the method achieves relatively good performance on the rodent burrows dataset. This study introduces a novel approach for plateau rodent infestation detection and offers reliable technical support for grassland restoration and management.https://doi.org/10.1371/journal.pone.0325738
spellingShingle Xiangjie Huang
Guoying Zhang
Chunmei Li
Yaosheng Han
Qing Dong
Hao Wang
Method for assessing rodent infestation in plateau based on SegFormer.
PLoS ONE
title Method for assessing rodent infestation in plateau based on SegFormer.
title_full Method for assessing rodent infestation in plateau based on SegFormer.
title_fullStr Method for assessing rodent infestation in plateau based on SegFormer.
title_full_unstemmed Method for assessing rodent infestation in plateau based on SegFormer.
title_short Method for assessing rodent infestation in plateau based on SegFormer.
title_sort method for assessing rodent infestation in plateau based on segformer
url https://doi.org/10.1371/journal.pone.0325738
work_keys_str_mv AT xiangjiehuang methodforassessingrodentinfestationinplateaubasedonsegformer
AT guoyingzhang methodforassessingrodentinfestationinplateaubasedonsegformer
AT chunmeili methodforassessingrodentinfestationinplateaubasedonsegformer
AT yaoshenghan methodforassessingrodentinfestationinplateaubasedonsegformer
AT qingdong methodforassessingrodentinfestationinplateaubasedonsegformer
AT haowang methodforassessingrodentinfestationinplateaubasedonsegformer