2024
DOI: 10.3390/agronomy14040697
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ODN-Pro: An Improved Model Based on YOLOv8 for Enhanced Instance Detection in Orchard Point Clouds

Yaoqiang Pan,
Xvlin Xiao,
Kewei Hu
et al.

Abstract: In an unmanned orchard, various tasks such as seeding, irrigation, health monitoring, and harvesting of crops are carried out by unmanned vehicles. These vehicles need to be able to distinguish which objects are fruit trees and which are not, rather than relying on human guidance. To address this need, this study proposes an efficient and robust method for fruit tree detection in orchard point cloud maps. Feature extraction is performed on the 3D point cloud to form a two-dimensional feature vector containing … Show more

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Cited by 4 publications
(3 citation statements)
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“…The backbone is basically the same as that of YOLOv5 and consists of a series of convolutional and deconvolutional layers to extract features. It also incorporates residual connections and bottleneck structures to reduce network size and improve performance [29]. This part uses the C2f module as the basic building block that replaces the C3 module in YOLOv5.…”
Section: Datasetsmentioning
confidence: 99%
See 1 more Smart Citation
“…The backbone is basically the same as that of YOLOv5 and consists of a series of convolutional and deconvolutional layers to extract features. It also incorporates residual connections and bottleneck structures to reduce network size and improve performance [29]. This part uses the C2f module as the basic building block that replaces the C3 module in YOLOv5.…”
Section: Datasetsmentioning
confidence: 99%
“…detection results, while the classification head uses global average pooling to classify each feature map. It also adopts an anchor-free strategy, abandoning the anchor boxes used in YOLOv7, which reduces the number of box predictions and improves the speed of Non-Maximum Suppression (NMS)[29]. For loss computation, YOLOv8 uses the Task Aligned Assigner positive sample assignment strategy.…”
mentioning
confidence: 99%
“…The YOLOv8 detection algorithm is a lightweight anchor-free model that directly predicts the center of extraneous materials within power conduits instead of the offset of the known anchor frame (Talaat and ZainEldin, 2023 ; Pan et al, 2024 ). The algorithm can quickly locate the foreign objects in transmission lines to be detected during detection.…”
Section: Yolov8 Algorithmmentioning
confidence: 99%