Ye Li, Xiaofang Li, Rui Fu, Zhenqi Cheng, Jianchun Yu, Xuewei Wang, Hao Sun
{"title":"EDDet:用于茄子病害小靶点检测的高效深度融合和动态优化","authors":"Ye Li, Xiaofang Li, Rui Fu, Zhenqi Cheng, Jianchun Yu, Xuewei Wang, Hao Sun","doi":"10.1186/s12870-025-07268-1","DOIUrl":null,"url":null,"abstract":"<p><p>With the development of smart agriculture and the growth of the global population, vegetable production is facing the dual challenges of diversified planting environments and increased concealment of diseases. Eggplant, as an important economic crop, has its disease detection accuracy directly affecting yield and quality. However, traditional detection methods fail to effectively capture small diseased areas. To address this issue, this paper proposes an improved deep learning small target detection model-the Efficient Deep-fusion Detection Model (EDDet), which is specifically optimized for the recognition of small diseased spots in eggplant disease detection. In the detection network, we innovatively designed the Pinwheel Fusion Feature Extractor (PFFE) framework, replacing the standard convolutions of the first two layers with Pinwheel Convolutions (PConv). By using asymmetric padding and parallel convolution kernel design, the receptive field is effectively expanded, the ability to capture underlying features is enhanced, and the detection of small diseased areas in eggplants is more precise. In the feature fusion stage, this paper designs a Cross-layer Attention Module (CAM), including Cross-layer Channel Attention (CCA) and Cross-layer Spatial Attention (CSA), which can efficiently interact and fuse features of different scales without additional sampling, alleviating the information loss caused by semantic gaps. In addition, to solve the instability caused by IoU fluctuations in the bounding box regression process, the model introduces Scale-based Dynamic Loss (SD Loss), which dynamically adjusts the loss weight based on the size of the target. By adaptively adjusting the proportion of IoU-based loss and location constraint loss, more precise localization and stable regression of small diseased areas in eggplants are achieved. Experimental results demonstrate that EDDet achieves a notable improvement in mAP50 (85.4%), outperforming the baseline by 2.8%.Importantly, EDDet also Maintains excellent efficiency with only 2.75 M parameters, 9.1 GFLOPs, and a high inference speed of 288.3 FPS, which is 37.5 FPS higher than the baseline.These results highlight the model's strong potential for real-time deployment in complex agricultural scenarios where both precision and speed are critical.</p>","PeriodicalId":9198,"journal":{"name":"BMC Plant Biology","volume":"25 1","pages":"1261"},"PeriodicalIF":4.8000,"publicationDate":"2025-09-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12487401/pdf/","citationCount":"0","resultStr":"{\"title\":\"EDDet: efficient deep-fusion and dynamic optimization for small target detection in eggplant diseases.\",\"authors\":\"Ye Li, Xiaofang Li, Rui Fu, Zhenqi Cheng, Jianchun Yu, Xuewei Wang, Hao Sun\",\"doi\":\"10.1186/s12870-025-07268-1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>With the development of smart agriculture and the growth of the global population, vegetable production is facing the dual challenges of diversified planting environments and increased concealment of diseases. Eggplant, as an important economic crop, has its disease detection accuracy directly affecting yield and quality. However, traditional detection methods fail to effectively capture small diseased areas. To address this issue, this paper proposes an improved deep learning small target detection model-the Efficient Deep-fusion Detection Model (EDDet), which is specifically optimized for the recognition of small diseased spots in eggplant disease detection. In the detection network, we innovatively designed the Pinwheel Fusion Feature Extractor (PFFE) framework, replacing the standard convolutions of the first two layers with Pinwheel Convolutions (PConv). By using asymmetric padding and parallel convolution kernel design, the receptive field is effectively expanded, the ability to capture underlying features is enhanced, and the detection of small diseased areas in eggplants is more precise. In the feature fusion stage, this paper designs a Cross-layer Attention Module (CAM), including Cross-layer Channel Attention (CCA) and Cross-layer Spatial Attention (CSA), which can efficiently interact and fuse features of different scales without additional sampling, alleviating the information loss caused by semantic gaps. In addition, to solve the instability caused by IoU fluctuations in the bounding box regression process, the model introduces Scale-based Dynamic Loss (SD Loss), which dynamically adjusts the loss weight based on the size of the target. By adaptively adjusting the proportion of IoU-based loss and location constraint loss, more precise localization and stable regression of small diseased areas in eggplants are achieved. Experimental results demonstrate that EDDet achieves a notable improvement in mAP50 (85.4%), outperforming the baseline by 2.8%.Importantly, EDDet also Maintains excellent efficiency with only 2.75 M parameters, 9.1 GFLOPs, and a high inference speed of 288.3 FPS, which is 37.5 FPS higher than the baseline.These results highlight the model's strong potential for real-time deployment in complex agricultural scenarios where both precision and speed are critical.</p>\",\"PeriodicalId\":9198,\"journal\":{\"name\":\"BMC Plant Biology\",\"volume\":\"25 1\",\"pages\":\"1261\"},\"PeriodicalIF\":4.8000,\"publicationDate\":\"2025-09-30\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12487401/pdf/\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"BMC Plant Biology\",\"FirstCategoryId\":\"99\",\"ListUrlMain\":\"https://doi.org/10.1186/s12870-025-07268-1\",\"RegionNum\":2,\"RegionCategory\":\"生物学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q1\",\"JCRName\":\"PLANT SCIENCES\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"BMC Plant Biology","FirstCategoryId":"99","ListUrlMain":"https://doi.org/10.1186/s12870-025-07268-1","RegionNum":2,"RegionCategory":"生物学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"PLANT SCIENCES","Score":null,"Total":0}
引用次数: 0
摘要
随着智慧农业的发展和全球人口的增长,蔬菜生产面临着种植环境多样化和病害隐蔽性提高的双重挑战。茄子作为重要的经济作物,其病害检测的准确性直接影响到茄子的产量和品质。然而,传统的检测方法无法有效捕获小病变区域。针对这一问题,本文提出了一种改进的深度学习小目标检测模型——高效深度融合检测模型(Efficient deep -fusion detection Model, EDDet),该模型专门针对茄子病害检测中的小病斑识别进行了优化。在检测网络中,我们创新设计了Pinwheel Fusion Feature Extractor (PFFE)框架,将前两层的标准卷积替换为Pinwheel convolutions (PConv)。采用非对称填充和平行卷积核设计,有效扩展了接收野,增强了捕捉底层特征的能力,提高了茄子小病区的检测精度。在特征融合阶段,本文设计了跨层注意模块(CAM),包括跨层通道注意(CCA)和跨层空间注意(CSA),该模块可以在不额外采样的情况下有效地交互和融合不同尺度的特征,减轻了语义间隙带来的信息损失。此外,为了解决边界盒回归过程中IoU波动带来的不稳定性,模型引入了Scale-based Dynamic Loss (SD Loss),根据目标的大小动态调整损失权重。通过自适应调整iou损失和位置约束损失的比例,实现了茄子小病区更精确的定位和稳定回归。实验结果表明,EDDet在mAP50上取得了显著的提高(85.4%),比基线提高了2.8%。重要的是,EDDet还保持了出色的效率,只有2.75 M参数,9.1 GFLOPs,推理速度高达288.3 FPS,比基线提高了37.5 FPS。这些结果突出了该模型在精确和速度都至关重要的复杂农业场景中实时部署的强大潜力。
EDDet: efficient deep-fusion and dynamic optimization for small target detection in eggplant diseases.
With the development of smart agriculture and the growth of the global population, vegetable production is facing the dual challenges of diversified planting environments and increased concealment of diseases. Eggplant, as an important economic crop, has its disease detection accuracy directly affecting yield and quality. However, traditional detection methods fail to effectively capture small diseased areas. To address this issue, this paper proposes an improved deep learning small target detection model-the Efficient Deep-fusion Detection Model (EDDet), which is specifically optimized for the recognition of small diseased spots in eggplant disease detection. In the detection network, we innovatively designed the Pinwheel Fusion Feature Extractor (PFFE) framework, replacing the standard convolutions of the first two layers with Pinwheel Convolutions (PConv). By using asymmetric padding and parallel convolution kernel design, the receptive field is effectively expanded, the ability to capture underlying features is enhanced, and the detection of small diseased areas in eggplants is more precise. In the feature fusion stage, this paper designs a Cross-layer Attention Module (CAM), including Cross-layer Channel Attention (CCA) and Cross-layer Spatial Attention (CSA), which can efficiently interact and fuse features of different scales without additional sampling, alleviating the information loss caused by semantic gaps. In addition, to solve the instability caused by IoU fluctuations in the bounding box regression process, the model introduces Scale-based Dynamic Loss (SD Loss), which dynamically adjusts the loss weight based on the size of the target. By adaptively adjusting the proportion of IoU-based loss and location constraint loss, more precise localization and stable regression of small diseased areas in eggplants are achieved. Experimental results demonstrate that EDDet achieves a notable improvement in mAP50 (85.4%), outperforming the baseline by 2.8%.Importantly, EDDet also Maintains excellent efficiency with only 2.75 M parameters, 9.1 GFLOPs, and a high inference speed of 288.3 FPS, which is 37.5 FPS higher than the baseline.These results highlight the model's strong potential for real-time deployment in complex agricultural scenarios where both precision and speed are critical.
期刊介绍:
BMC Plant Biology is an open access, peer-reviewed journal that considers articles on all aspects of plant biology, including molecular, cellular, tissue, organ and whole organism research.