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基于改進SSD卷積神經(jīng)網(wǎng)絡的蘋果定位與分級方法
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河北省重點研發(fā)計劃項目(21321902D)


Apple Location and Classification Based on Improved SSD Convolutional Neural Network
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    摘要:

    為實現(xiàn)蘋果果徑與果形快速準確自動化分級,提出了基于改進型SSD卷積神經(jīng)網(wǎng)絡的蘋果定位與分級算法,。深度圖像與兩通道圖像融合提高蘋果分級效率,,即對從頂部獲取的蘋果RGB圖像進行通道分離,并提取分離通道中影響蘋果識別精度最大的兩個通道與基于ZED雙目立體相機從蘋果頂部獲取的蘋果部分深度圖像進行融合,,在融合圖像中計算蘋果的縱徑相關信息,,實現(xiàn)了基于頂部融合圖像的多個蘋果果形分級和信息輸出;使用深度可分離卷積模塊替換原SSD網(wǎng)絡主干特征提取網(wǎng)絡中部分標準卷積,,實現(xiàn)了網(wǎng)絡的輕量化,。經(jīng)過訓練的算法在驗證集下的識別召回率,、精確率、mAP和F1值分別為93.68%,、94.89%,、98.37%和94.25%。通過對比分析了4種輸入層識別精確率的差異,,實驗結果表明輸入層的圖像通道組合為DGB時對蘋果的識別與分級mAP最高,。在使用相同輸入層的情況下,比較原SSD,、Faster R-CNN與YOLO v5算法在不同果實數(shù)目下對蘋果的實際識別定位與分級效果,并以mAP為評估值,,實驗結果表明改進型SSD在密集蘋果的mAP與原SSD相當,,比Faster R-CNN高1.33個百分點,比YOLO v5高14.23個百分點,。并且在不同硬件條件下驗證了該算法定位分級效率的優(yōu)勢,,單幅圖像在GPU下的檢測時間為5.71ms,在CPU下的檢測時間為15.96ms,,檢測視頻的幀率達到175.17f/s和62.64f/s,。該研究可為自動化分級設備在高速環(huán)境下精準定位并分級蘋果提供理論基礎。

    Abstract:

    An apple localization and grading algorithm was proposed based on an improved SSD convolutional neural network to achieve fast and accurate automatic grading of apple fruit diameter and shape. The efficiency of apple grading was improved by improving the input layer of the original SSD network. Channel separation was performed on the color apple image obtained from the top, and the two channels in the separation channel that had the most significant impact on the apple recognition accuracy were extracted. A fused image was composed of the two channels and the apple depth image from the top based on the binocular camera. The longitudinal diameter-related information of the apple was calculated in the fused image. Moreover, multiple apple shape grading and information output based on the fused image were realized through this method. The depthwise-separable convolution module was used to replace part of the standard convolution in the original SSD network backbone feature extraction network, which achieved the light weighting of the network. The recognition recall, accuracy, mAP and F1 values of the trained model under the verification set were 93.68%, 94.89%, 98.37% and 94.25%, respectively. By comparing and analyzing the differences in recognition accuracy among the four input layers, the experimental results showed that the highest recognition and grading mAP for apples was achieved when the image channel combination of the input layer was DGB. The actual recognition localization and grading effects of the original SSD, Faster R-CNN and YOLO v5 algorithms for apples with different numbers of fruits were compared by using the same input layer and evaluated in terms of mAP. The experimental results showed that the improved SSD had a comparable mAP to the original SSD for dense apples, which was higher than that of Faster R-CNN by 1.33 percentage points and higher than YOLO v5 by 14.23 percentage points. The advantages of the algorithm localization and grading efficiency were verified under different hardware conditions. The detection time of an image was 5.71ms under GPU and 15.96ms under CPU, and the actual frame rate of the detected video reached 175.17f/s and 62.64f/s. The research result can provide a theoretical basis for automated grading equipment to accurately locate and grade apples in a high-speed environment.

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張立杰,周舒驊,李娜,張延強,陳廣毅,高笑.基于改進SSD卷積神經(jīng)網(wǎng)絡的蘋果定位與分級方法[J].農(nóng)業(yè)機械學報,2023,54(6):223-232. ZHANG Lijie, ZHOU Shuhua, LI Na, ZHANG Yanqiang, CHEN Guangyi, GAO Xiao. Apple Location and Classification Based on Improved SSD Convolutional Neural Network[J]. Transactions of the Chinese Society for Agricultural Machinery,2023,54(6):223-232.

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  • 收稿日期:2022-10-28
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  • 在線發(fā)布日期: 2023-02-14
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