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基于FPB-DETR的苹果成熟度检测算法

薛婷 王震洲 孟志永 张秀清 杨琳 邓标

河北科技大学学报2026,Vol.47Issue(2):209-219,11.
河北科技大学学报2026,Vol.47Issue(2):209-219,11.DOI:10.7535/hbkd.2026yx02010

基于FPB-DETR的苹果成熟度检测算法

Apple maturity detection algorithm based on FPB-DETR

薛婷 1王震洲 1孟志永 1张秀清 1杨琳 1邓标1

作者信息

  • 1. 河北科技大学信息科学与工程学院,河北 石家庄 050018
  • 折叠

摘要

Abstract

To address the low accuracy and efficiency of apple maturity detection under large-scale,lighting,and occlusion conditions,an improved FPB-DETR detection model based on RT-DETR was proposed.Firstly,a frequency-adaptive dilated convolution(FADC)module was introduced into the backbone network to precisely focus on subtle color gradients,immature spots,and texture stripes on apple surfaces by resolving the conflict between effective receptive field and feature bandwidth,as well as overcoming the limitations of fixed dilation rates.Secondly,a polaformer-attention-based intra-scale feature interaction(Pola-AIFI)module was designed to mitigate the issues of negative value neglect and excessive information entropy,suppressing interference from target apples under varying environmental conditions.Finally,a bi-directional feature pyramid network(BIFPN)structure was introduced during the multi-scale fusion stage to optimize feature fusion efficiency and key information focusing capability,reducing ambiguity interference in maturity feature transmission.The results show that the precision,recall rate and average accuracy of the FPB-DETR model proposed in this study are 92.5%,92.7%and 96.8%,respectively,which increases by 2.0%,1.7%and 1.8%,respectively compared with the original model,and are superior to those of Faster R-CNN,YOLOv5m,YOLOv8m,YOLOv11m and YOLOv12m object detection models,significantly enhancing the detection capability of the model;The average detection time of the model is 31 ms,which meets the real-time detection requirements for apple maturity.This study realizes better detection effect by combining feature extraction,attention mechanism and multi-scale fusion,providing reference for the optimization design of intelligent harvesting robots.

关键词

计算机神经网络/目标检测/成熟度/多尺度融合/RT-DETR

Key words

computer neural networks/object detection/maturity/multi-scale fusion/RT-DETR

分类

信息技术与安全科学

引用本文复制引用

薛婷,王震洲,孟志永,张秀清,杨琳,邓标..基于FPB-DETR的苹果成熟度检测算法[J].河北科技大学学报,2026,47(2):209-219,11.

基金项目

国家自然科学基金(62441401) (62441401)

河北科技大学学报

1008-1542

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