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基于深度與傳統(tǒng)特征融合的非限制條件下奶牛個(gè)體識(shí)別
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河北省重點(diǎn)研發(fā)計(jì)劃項(xiàng)目(22327404D),、國(guó)家重點(diǎn)研發(fā)計(jì)劃項(xiàng)目(2021YFD1300502)和河北農(nóng)業(yè)大學(xué)精準(zhǔn)畜牧學(xué)科群建設(shè)項(xiàng)目(1090064)


Individual Identification of Dairy Cows under Unrestricted Conditions Based on Fusion of Deep and Traditional Features
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    摘要:

    針對(duì)非限制條件下奶牛的個(gè)體識(shí)別,,提出了一種基于深度特征與傳統(tǒng)特征融合的奶牛識(shí)別方法。首先利用Mask R-CNN識(shí)別站立和躺臥姿態(tài)下的奶牛,。其次,,用兩種方法提取奶牛的特征概率向量:用卷積神經(jīng)網(wǎng)絡(luò)(Convolutional neural network, CNN)提取Softmax層概率向量形式的深度特征,;人工提取并利用近鄰成分分析(Neighbourhood component analysis,NCA)選擇傳統(tǒng)特征,,并將其輸入支持向量機(jī)(Support vector machine, SVM)模型,,輸出概率向量。最后對(duì)兩種特征進(jìn)行融合,,并基于融合后的特征采用SVM對(duì)奶牛進(jìn)行分類,。對(duì)58頭奶牛站立和躺臥姿態(tài)的數(shù)據(jù)集進(jìn)行了個(gè)體識(shí)別實(shí)驗(yàn),,結(jié)果表明,對(duì)于站立和躺臥姿態(tài)下的奶牛,,與單獨(dú)使用深度特征相比,,特征融合方法準(zhǔn)確率分別提高約3個(gè)百分點(diǎn)和2個(gè)百分點(diǎn);與單獨(dú)使用傳統(tǒng)特征相比,,特征融合方法準(zhǔn)確率分別提高約5個(gè)百分點(diǎn)和10個(gè)百分點(diǎn),。站立和躺臥姿態(tài)下的奶牛個(gè)體識(shí)別率分別達(dá)到98.66%和94.06%。本文研究結(jié)果可為智能奶牛行為分析,、疾病檢測(cè)等提供有效的技術(shù)支持,。

    Abstract:

    Cow individual recognition is the premise of automatic cow behavior analysis and disease detection,which is important for achieving precision animal husbandry. An individual identification method of dairy cows under unrestricted conditions based on the fusion of deep features and traditional features was proposed. Firstly, Mask R-CNN was used to identify cows in standing and lying positions. Secondly, two methods were used to extract the feature probability vectors of dairy cows. Convolutional neural network (CNN) was used to extract the deep features in the form of probability vectors of Softmax layer. The traditional features were manually extracted and selected by neighbourhood component analysis (NCA), and input into the support vector machine (SVM) model to output the probability vector. Finally, the two features were fused. Based on the fused features, SVM was used to classify the dairy cows. The experiment of cow individual identification was carried out on the image data set of 58 cows in standing and lying positions. The results showed that for cows in standing and lying cows, the feature fusion method improved the accuracy by about 3 percentage points and 2 percentage points compared with that using deep features alone, and the accuracy of the feature fusion method was improved by about 5 percentage points and 10 percentage points for cows in standing and lying postures, respectively, compared with traditional features alone. The accuracy of the method proposed reached 98.66% and 94.06% for standing and lying cows, respectively. The results can provide effective technical support for intelligent cow behavior analysis, disease detection, etc.

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司永勝,王朝陽,張艷,王克儉,劉剛.基于深度與傳統(tǒng)特征融合的非限制條件下奶牛個(gè)體識(shí)別[J].農(nóng)業(yè)機(jī)械學(xué)報(bào),2023,54(6):272-279. SI Yongsheng, WANG Zhaoyang, ZHANG Yan, WANG Kejian, LIU Gang. Individual Identification of Dairy Cows under Unrestricted Conditions Based on Fusion of Deep and Traditional Features[J]. Transactions of the Chinese Society for Agricultural Machinery,2023,54(6):272-279.

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  • 收稿日期:2022-09-26
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  • 在線發(fā)布日期: 2022-11-18
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