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基于深度圖像的蛋雞行為識別方法
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“十二五”國家科技支撐計劃項目(2014BAD08B00—01)


Automatic Recognition Method of Laying Hen Behaviors Based on Depth Image Processing
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    摘要:

    基于深度圖像分析技術(shù)研究了一種針對蛋雞群體行為(分布指數(shù)、水平活躍度和垂直活躍度)和群體中個體行為(采食,、躺,、站和坐)經(jīng)濟(jì)簡單的自動識別方法,。系統(tǒng)由1臺3D照相機(jī)同步采集數(shù)字和深度圖像數(shù)據(jù),,并開發(fā)軟件進(jìn)行蛋雞行為的自動識別,,系統(tǒng)5s采集1次圖像數(shù)據(jù),,共進(jìn)行10d的數(shù)據(jù)采集,。描述了行為識別算法并進(jìn)行了行為識別結(jié)果分析,。算法對蛋雞的采食,、躺、站和坐的識別準(zhǔn)確率分別為90.3%,、91.5%,、87.5%和56.2%。坐行為識別率較低的原因主要是有時蛋雞站著探索地面會被誤判為坐,,這可能與兩者之間的分割閾值不夠精確有關(guān),。

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    Animal behaviors are reflective of its welfare state. They contain important information that can enable producers to better manage livestock. Yet it is more difficult in recognizing the behaviors of group laying hens than other big size animals. Large numbers of hens, homogeneous in appearance, high stocking density and variable body size all contribute to this situation. A computer vision-based system was developed which can automatically recognize group behaviors (distribution index, horizontal activity index and vertical activity index) and individual behaviors (feeding, lying, standing and sitting) of group hens. The system consisted of a 3D camera that simultaneously acquired digital and depth images and a software program that detected and identified the behaviors. The computational algorithm for the analysis of depth images was presented and its performance in recognizing the behaviors as compared with manual recognition was analyzed. The images were acquired at 5s intervals in 10d period. The algorithm had the following accuracy of individual behavioral classification: 90.3% in feeding, 91.5% in lying, 87.5% in standing and 56.2% in sitting. The lower classification accuracy for the sitting presumably stemmed to imprecise segmentation valve value between sitting and standing and sometimes mistook hen’s standing behavior (exploring in ground) for sitting which could be improved in later test. Hence the reported system provided an effective way to automatically process and classify hen’s group and individual behaviors. This tool was conducive to investigate behavioral responses and time budget of laying hens and facility design and management practice.

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勞鳳丹,杜曉冬,滕光輝.基于深度圖像的蛋雞行為識別方法[J].農(nóng)業(yè)機(jī)械學(xué)報,2017,48(1):155-162. LAO Fengdan, DU Xiaodong, TENG Guanghui. Automatic Recognition Method of Laying Hen Behaviors Based on Depth Image Processing[J]. Transactions of the Chinese Society for Agricultural Machinery,2017,48(1):155-162.

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  • 收稿日期:2016-08-15
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  • 在線發(fā)布日期: 2017-01-10
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