GCPDFFNet: Small Object Detection for Rice Blast Recognition.

IF 2.6 2区 农林科学 Q2 PLANT SCIENCES
Phytopathology Pub Date : 2024-07-01 Epub Date: 2024-07-05 DOI:10.1094/PHYTO-09-23-0326-R
Dejin Xie, Wei Ye, Yining Pan, Jiaoyu Wang, Haiping Qiu, Hongkai Wang, Zhaoxing Li, Tianhao Chen
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引用次数: 0

Abstract

Early detection of rice blast disease is pivotal to ensure rice yield. We collected in situ images of rice blast and constructed a rice blast dataset based on variations in lesion shape, size, and color. Given that rice blast lesions are small and typically exhibit round, oval, and fusiform shapes, we proposed a small object detection model named GCPDFFNet (global context-based parallel differentiation feature fusion network) for rice blast recognition. The GCPDFFNet model has three global context feature extraction modules and two parallel differentiation feature fusion modules. The global context modules are employed to focus on the lesion areas; the parallel differentiation feature fusion modules are used to enhance the recognition effect of small-sized lesions. In addition, we proposed the SCYLLA normalized Wasserstein distance loss function, specifically designed to accelerate model convergence and improve the detection accuracy of rice blast disease. Comparative experiments were conducted on the rice blast dataset to evaluate the performance of the model. The proposed GCPDFFNet model outperformed the baseline network CenterNet, with a significant increase in mean average precision from 83.6 to 95.4% on the rice blast test set while maintaining a satisfactory frames per second drop from 147.9 to 122.1. Our results suggest that the GCPDFFNet model can accurately detect in situ rice blast disease while ensuring the inference speed meets the real-time requirements.

GCPDFFNet:用于水稻爆炸识别的小物体检测
早期发现稻瘟病对确保水稻产量至关重要。我们收集了稻瘟病的原位图像,并根据病斑形状、大小和颜色的变化构建了稻瘟病数据集。鉴于稻瘟病病灶较小,通常表现为圆形、椭圆形和纺锤形,我们提出了一种名为 GCPDFFNet(基于全局上下文的并行分化特征融合网络)的小物体检测模型,用于稻瘟病识别。GCPDFFNet 模型包含三个全局上下文特征提取模块和两个并行分化特征融合模块。全局上下文模块用于聚焦病灶区域;并行分化特征融合模块用于增强对小面积病灶的识别效果。此外,我们还提出了 SCYLLA 归一化 Wasserstein 距离损失函数,专门用于加速模型收敛和提高稻瘟病的检测精度。我们在稻瘟病数据集上进行了对比实验,以评估模型的性能。提出的 GCPDFFNet 模型优于基线网络 CenterNet,在稻瘟病测试集上的平均精度从 83.6% 显著提高到 95.4%,同时每秒帧数从 147.9 帧下降到 122.1 帧,保持了令人满意的水平。我们的结果表明,GCPDFFNet 模型可以准确地检测原位稻瘟病,同时确保推理速度满足实时要求。
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来源期刊
Phytopathology
Phytopathology 生物-植物科学
CiteScore
5.90
自引率
9.40%
发文量
505
审稿时长
4-8 weeks
期刊介绍: Phytopathology publishes articles on fundamental research that advances understanding of the nature of plant diseases, the agents that cause them, their spread, the losses they cause, and measures that can be used to control them. Phytopathology considers manuscripts covering all aspects of plant diseases including bacteriology, host-parasite biochemistry and cell biology, biological control, disease control and pest management, description of new pathogen species description of new pathogen species, ecology and population biology, epidemiology, disease etiology, host genetics and resistance, mycology, nematology, plant stress and abiotic disorders, postharvest pathology and mycotoxins, and virology. Papers dealing mainly with taxonomy, such as descriptions of new plant pathogen taxa are acceptable if they include plant disease research results such as pathogenicity, host range, etc. Taxonomic papers that focus on classification, identification, and nomenclature below the subspecies level may also be submitted to Phytopathology.
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