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TeaAppearanceLiteNet: A Lightweight and Efficient Network for Tea Leaf Appearance Inspection

  • Xiaolei Chen
  • , Long Wu*
  • , Xu Yang*
  • , Lu Xu
  • , Shuyu Chen
  • , Yong Zhang
  • *Corresponding author for this work
  • Zhejiang Sci-Tech University

Research output: Contribution to journalArticlepeer-review

Abstract

The inspection of the appearance quality of tea leaves is vital for market classification and value assessment within the tea industry. Nevertheless, many existing detection approaches rely on sophisticated model architectures, which hinder their practical use on devices with limited computational resources. This study proposes a lightweight object detection network, TeaAppearanceLiteNet, tailored for tea leaf appearance analysis. A novel C3k2_PartialConv module is introduced to significantly reduce computational redundancy while maintaining effective feature extraction. The CBMA_MSCA attention mechanism is incorporated to enable the multi-scale modeling of channel attention, enhancing the perception accuracy of features at various scales. By incorporating the Detect_PinwheelShapedConv head, the spatial representation power of the network is significantly improved. In addition, the MPDIoU_ShapeIoU loss is formulated to enhance the correspondence between predicted and ground-truth bounding boxes across multiple dimensions—covering spatial location, geometric shape, and scale—which contributes to a more stable regression and higher detection accuracy. Experimental results demonstrate that, compared to baseline methods, TeaAppearanceLiteNet achieves a 12.27% improvement in accuracy, reaching a mAP@0.5 of 84.06% with an inference speed of 157.81 FPS. The parameter count is only 1.83% of traditional models. The compact and high-efficiency design of TeaAppearanceLiteNet enables its deployment on mobile and edge devices, thereby supporting the digitalization and intelligent upgrading of the tea industry under the framework of smart agriculture.

Original languageEnglish
Article number9461
JournalApplied Sciences (Switzerland)
Volume15
Issue number17
DOIs
StatePublished - Sep 2025

Keywords

  • C3k2
  • attention mechanism
  • detection head
  • object detection
  • regression loss function

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