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RT-DETR-SoilCuc:基于土壤环境的黄瓜种子萌发检测方法

RT-DETR-SoilCuc: detection method for cucumber germinationinsoil based environment.

作者信息

Li Zhengjun, Wu Yijie, Jiang Haoyu, Lei Deyi, Pan Feng, Qiao Jinxin, Fu Xiuqing, Guo Biao

机构信息

College of Artificial Intelligence, Nanjing Agricultural University, Nanjing, China.

College of Engineering, Nanjing Agricultural University, Nanjing, China.

出版信息

Front Plant Sci. 2024 Aug 22;15:1425103. doi: 10.3389/fpls.2024.1425103. eCollection 2024.

Abstract

Existing seed germination detection technologies based on deep learning are typically optimized for hydroponic breeding environments, leading to a decrease in recognition accuracy in complex soil cultivation environments. On the other hand, traditional manual germination detection methods are associated with high labor costs, long processing times, and high error rates, with these issues becoming more pronounced in complex soil-based environments. To address these issues in the germination process of new cucumber varieties, this paper utilized a Seed Germination Phenotyping System to construct a cucumber germination soil-based experimental environment that is more closely aligned with actual production. This system captures images of cucumber germination under salt stress in a soil-based environment, constructs a cucumber germination dataset, and designs a lightweight real-time cucumber germination detection model based on Real-Time DEtection TRansformer (RT-DETR). By introducing online image enhancement, incorporating the Adown downsampling operator, replacing the backbone convolutional block with Generalized Efficient Lightweight Network, introducing the Online Convolutional Re-parameterization mechanism, and adding the Normalized Gaussian Wasserstein Distance loss function, the training effectiveness of the model is enhanced. This enhances the model's capability to capture profound semantic details, achieves significant lightweighting, and enhances the model's capability to capture embryonic root targets, ultimately completing the construction of the RT-DETR-SoilCuc model. The results show that, compared to the RT-DETR-R18 model, the RT-DETR-SoilCuc model exhibits a 61.2% reduction in Params, 61% reduction in FLOP, and 56.5% reduction in weight size. Its mAP@0.5, precision, and recall rates are 98.2%, 97.4%, and 96.9%, respectively, demonstrating certain advantages over the You Only Look Once series models of similar size. Germination tests of cucumbers under different concentrations of salt stress in a soil-based environment were conducted, validating the high accuracy of the RT-DETR-SoilCuc model for embryonic root target detection in the presence of soil background interference. This research reduces the manual workload in the monitoring of cucumber germination and provides a method for the selection and breeding of new cucumber varieties.

摘要

现有的基于深度学习的种子发芽检测技术通常是针对水培育种环境进行优化的,导致在复杂的土壤栽培环境中识别准确率下降。另一方面,传统的手动发芽检测方法存在劳动力成本高、处理时间长和错误率高的问题,在基于复杂土壤的环境中这些问题更加突出。为了解决新黄瓜品种发芽过程中的这些问题,本文利用种子发芽表型系统构建了一个与实际生产更紧密匹配的基于土壤的黄瓜发芽实验环境。该系统在基于土壤的环境中捕捉盐胁迫下黄瓜发芽的图像,构建黄瓜发芽数据集,并基于实时检测变压器(RT-DETR)设计了一个轻量级实时黄瓜发芽检测模型。通过引入在线图像增强、合并Adown下采样算子、用广义高效轻量级网络替换主干卷积块、引入在线卷积重新参数化机制以及添加归一化高斯瓦瑟斯坦距离损失函数,提高了模型的训练效果。这增强了模型捕捉深层语义细节的能力,实现了显著的轻量化,并增强了模型捕捉胚根目标的能力,最终完成了RT-DETR-SoilCuc模型的构建。结果表明,与RT-DETR-R18模型相比,RT-DETR-SoilCuc模型的参数减少了61.2%,浮点运算量减少了61%,权重大小减少了56.5%。其mAP@0.5、精确率和召回率分别为98.2%、97.4%和96.9%,在尺寸相似的You Only Look Once系列模型中显示出一定优势。在基于土壤的环境中对不同浓度盐胁迫下的黄瓜进行了发芽试验,验证了RT-DETR-SoilCuc模型在存在土壤背景干扰的情况下对胚根目标检测的高精度。本研究减少了黄瓜发芽监测中的人工工作量,并为新黄瓜品种的选育提供了一种方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2ed3/11374606/00f03d5a2514/fpls-15-1425103-g001.jpg

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