2023
DOI: 10.3390/agriculture14010029
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MSGV-YOLOv7: A Lightweight Pineapple Detection Method

Rihong Zhang,
Zejun Huang,
Yuling Zhang
et al.

Abstract: In order to optimize the efficiency of pineapple harvesting robots in recognition and target detection, this paper introduces a lightweight pineapple detection model, namely MSGV-YOLOv7. This model adopts MobileOne as the innovative backbone network and uses thin neck as the neck network. The enhancements in these architectures have significantly improved the ability of feature extraction and fusion, thereby speeding up the detection rate. Empirical results indicated that MSGV-YOLOv7 surpassed the original YOL… Show more

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“…Considering these issues, we try to deploy an IAP deep-learning model on a resourceconstrained mobile device for model inferencing and prediction. First, lightweight neural networks must be adapted to the computing and storage limitations of mobile devices [11][12][13][14].…”
Section: Introductionmentioning
confidence: 99%
“…Considering these issues, we try to deploy an IAP deep-learning model on a resourceconstrained mobile device for model inferencing and prediction. First, lightweight neural networks must be adapted to the computing and storage limitations of mobile devices [11][12][13][14].…”
Section: Introductionmentioning
confidence: 99%