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BiSeNeXt:一种基于改进的BiSeNetV2的复杂场景下山药叶片与病害分割方法。

BiSeNeXt: a yam leaf and disease segmentation method based on an improved BiSeNetV2 in complex scenes.

作者信息

Lu Bibo, Lu Yanjun, Liang Di, Yang Jie

机构信息

School of Computer Science and Technology, Henan Polytechnic University, Jiaozuo, China.

Institute of Characteristic Agriculture, Jiaozuo Academy of Agriculture and Forestry Sciences, Jiaozuo, China.

出版信息

Front Plant Sci. 2025 Aug 5;16:1602102. doi: 10.3389/fpls.2025.1602102. eCollection 2025.

Abstract

INTRODUCTION

Yam is an important medicinal and edible crop, but its quality and yield are greatly affected by leaf diseases. Currently, research on yam leaf disease segmentation remains unexplored. Challenges like leaf overlapping, uneven lighting and irregular disease spots in complex environments limit segmentation accuracy.

METHODS

To address these challenges, this paper introduces the first yam leaf disease segmentation dataset and proposes BiSeNeXt, an enhanced method based on BiSeNetV2. Firstly, dynamic feature extraction block (DFEB) enhances the precision of leaf and disease edge pixels and reduces lesion omission through dynamic receptive-field convolution (DRFConv) and pixel shuffle (PixelShuffle) downsampling. Secondly, efficient asymmetric multi-scale attention (EAMA) effectively alleviates the problem of lesion adhesion by combining asymmetric convolution with a multi-scale parallel structure. Finally, PointRefine decoder adaptively selects uncertain points in the image predictions and refines them point-by-point, producing accurate segmentation of leaves and spots.

RESULTS

Experimental results indicated that the approach achieved a 97.04% intersection over union (IoU) for leaf segmentation and an 84.75% IoU for disease segmentation. Compared to DeepLabV3+, the proposed method improves the IoU of leaf and disease segmentation by 2.22% and 5.58%, respectively. Additionally, the FLOPs and total number of parameters of the proposed method require only 11.81% and 7.81% of DeepLabV3+, respectively.

DISCUSSION

Therefore, the proposed method can efficiently and accurately extract yam leaf spots in complex scenes, providing a solid foundation for analyzing yam leaves and diseases.

摘要

引言

山药是一种重要的药食两用作物,但其品质和产量受到叶部病害的严重影响。目前,关于山药叶部病害分割的研究尚属空白。复杂环境中叶片重叠、光照不均以及病害斑点不规则等问题限制了分割精度。

方法

为应对这些挑战,本文引入了首个山药叶部病害分割数据集,并提出了基于BiSeNetV2的增强方法BiSeNeXt。首先,动态特征提取模块(DFEB)通过动态感受野卷积(DRFConv)和像素洗牌(PixelShuffle)下采样提高叶片和病害边缘像素的精度,减少病斑遗漏。其次,高效非对称多尺度注意力(EAMA)通过将非对称卷积与多尺度并行结构相结合,有效缓解了病斑粘连问题。最后,PointRefine解码器在图像预测中自适应选择不确定点并逐点细化,实现叶片和病斑的精确分割。

结果

实验结果表明,该方法在叶片分割上达到了97.04%的交并比(IoU),在病害分割上达到了84.75%的IoU。与DeepLabV3+相比,该方法分别将叶片和病害分割的IoU提高了2.22%和5.58%。此外,该方法的浮点运算次数(FLOPs)和参数总数仅分别为DeepLabV3+的11.81%和7.81%。

讨论

因此,该方法能够在复杂场景中高效、准确地提取山药叶部病斑,为分析山药叶片和病害提供了坚实基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f034/12361221/b5107e2f16ae/fpls-16-1602102-g001.jpg

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