Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Research on High-Accuracy Identification of Maize Seed Varieties Based on a Lightweight Improved YOLOv8

View through CrossRef
Abstract The variety purity of crop seeds is the main quality indicator of seeds, which affects the yield and quality of crops. To achieve fast identification of maize seed varieties, this study collected images of 10 types of maize seeds, totaling 3,249 seeds. This research proposed a lightweight and small-object detection model for maize seed variety identification based on an improved YOLOv8 model: E-YOLOv8. Firstly, the backbone was replaced with FasterNet, which reduced redundant computation and memory access, allowing more efficient extraction of spatial features. Secondly, the CARAFE was introduced, offered a larger receptive field and adaptive convolution kernels, which better aggregated contextual information, prevented feature loss, and improved the quality of upsampling and the accuracy of dense prediction tasks. Additionally, the Detect module was replaced with the improved Detect_EMA module, which efficiently retained information in each channel, reduced computational load, and more specifically optimized detection results. Lastly, the loss function was replaced with Inner_SIoU, which was more suitable for small-object detection tasks. Ablation experiments verified the performance of the model, and comparisons were made with YOLOv8, YOLOv6, and YOLOv10. The proposed E-YOLOv8 achieved a mean Average Precision (mAP) of 96.2%, a 4.4% improvement over YOLOv8, with enhancements in all other evaluation metrics. This study provided a theoretical foundation for the efficient detection of maize varieties and offered strong technical support for the intelligent and automated development of agriculture.
Title: Research on High-Accuracy Identification of Maize Seed Varieties Based on a Lightweight Improved YOLOv8
Description:
Abstract The variety purity of crop seeds is the main quality indicator of seeds, which affects the yield and quality of crops.
To achieve fast identification of maize seed varieties, this study collected images of 10 types of maize seeds, totaling 3,249 seeds.
This research proposed a lightweight and small-object detection model for maize seed variety identification based on an improved YOLOv8 model: E-YOLOv8.
Firstly, the backbone was replaced with FasterNet, which reduced redundant computation and memory access, allowing more efficient extraction of spatial features.
Secondly, the CARAFE was introduced, offered a larger receptive field and adaptive convolution kernels, which better aggregated contextual information, prevented feature loss, and improved the quality of upsampling and the accuracy of dense prediction tasks.
Additionally, the Detect module was replaced with the improved Detect_EMA module, which efficiently retained information in each channel, reduced computational load, and more specifically optimized detection results.
Lastly, the loss function was replaced with Inner_SIoU, which was more suitable for small-object detection tasks.
Ablation experiments verified the performance of the model, and comparisons were made with YOLOv8, YOLOv6, and YOLOv10.
The proposed E-YOLOv8 achieved a mean Average Precision (mAP) of 96.
2%, a 4.
4% improvement over YOLOv8, with enhancements in all other evaluation metrics.
This study provided a theoretical foundation for the efficient detection of maize varieties and offered strong technical support for the intelligent and automated development of agriculture.

Related Results

Influence of Product Quality on Organizational Performance of Seed Maize Companies in Kenya
Influence of Product Quality on Organizational Performance of Seed Maize Companies in Kenya
A number of new seed entrepreneurs were established in Kenya, however, the majority of them fail to achieve the required business growth and competiveness. As a result, they remain...
Recognition of Maize Tassels Based on Improved YOLOv8 and Unmanned Aerial Vehicles RGB Images
Recognition of Maize Tassels Based on Improved YOLOv8 and Unmanned Aerial Vehicles RGB Images
The tasseling stage of maize, as a critical period of maize cultivation, is essential for predicting maize yield and understanding the normal condition of maize growth. However, th...
Improvement of Provitamin A in Maize Varieties Using Arbuscular Mycorrhizal Fungus, Glomus clarum
Improvement of Provitamin A in Maize Varieties Using Arbuscular Mycorrhizal Fungus, Glomus clarum
Arbuscular mycorrhizal fungus (AMF, Glomus clarum) has been used widely as a bio-amendment and bio-control agent in several biotechnological studies. In this study, biofortificatio...
YOLOv8 forestry pest recognition based on improved re-parametric convolution
YOLOv8 forestry pest recognition based on improved re-parametric convolution
IntroductionThe ecological and economic impacts of forest pests have intensified, particularly in remote areas. Traditional pest detection methods are often inefficient and inaccur...
Detection of seed-borne pathogens in sesame and their management through seed biopriming
Detection of seed-borne pathogens in sesame and their management through seed biopriming
Sesame is a significant oilseed crop cultivated extensively in the tropical and subtropical areas of India. Seed-borne pathogens are the most important biological constraints in se...
Maize Disease Recognition Based On Image Enhancement And OSCRNet
Maize Disease Recognition Based On Image Enhancement And OSCRNet
Abstract Background: Under natural light irradiation, there are significant challenges in the identification of maize leaf diseases because of the difficulties in extractin...
Effect of seed priming and seed rate on the performance of wheat (Triticum aestivum)
Effect of seed priming and seed rate on the performance of wheat (Triticum aestivum)
A field experiment was carried out to determine the impact of different seed rates and priming strategies on germination percentage, growth attributes and yield of wheat. The exper...
Legume based Profitable Intercropping System for Management of Fall Armyworm in Maize
Legume based Profitable Intercropping System for Management of Fall Armyworm in Maize
Background: Incidence of fall armyworm in maize has been reported at a severe level since 2018 resulting in low yield and in extreme cases complete failure of the crop. In view of ...

Back to Top