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Modeling and Recognizing Behavior Patterns of Laying Hens in Furnished Cages

机译:布置笼中母鸡的建模与识别行为模式

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Automated individual animal behavior surveillance, by means of low-cost cameras and computer vision techniques, has the ability to generate continuous data providing an objective measure of behavior, without disturbing the animals. The specific puipose of this current study was to develop an automatic computer vision technique to quantify six types of behavior of an individual laying hen (standing, sitting, sleeping, preening, scratching, pecking) continuously and compare them with the current humanvisual observation. For this purpose, a model-based algorithm has been developed, based on the fact that behavior can be described as a time-series of di fie rent subsequent postures. The quantification of the hen's posture consists of its position, orientation and a set of parameters describing its shape, obtained by fitting a point distribution model to the hen's outline. Applying this algorithm to subsequent images in a video sequence, the successive values of the hen's posture parameterization represent the hen's behavior within that sequence. A model for each behavior type is created by clustering the set of posture parameterizations calculated from training video sequences with known behavior, provided by a trained ethologist. For the classification of the unknown behavior in a new video fragment, its posture parameter time series are calculated using the same algorithm and matched to each of the trained behavior models. The behavior in a new video fragment is then classified as the behavior type for which the model gives the best match. The system was tested on a set of over 14000 video fragments of a single hen in a cage, each fragment containing one of the six behavior types. The average classification rate was between 70%-96%, except 21% for pecking, due to an unreliable tracking of the chicken's head. Best results were obtained for sleeping (96%) and standing (90%).
机译:自动动物个体行为监控,通过低成本摄像机和计算机视觉技术手段,有可能产生连续的数据提供行为的客观测量,而不会干扰动物的能力。目前的研究的具体puipose是不断开发自动的计算机视觉技术来量化六种类型的个人蛋鸡的行为(站立,坐下,睡觉,打扮,刮伤,啄食),并与当前humanvisual观察比较。为此,基于模型的算法已被开发的基础上,这种行为可以被描述为一个时间序列的双FIE租随后姿势的事实。母鸡的姿势的定量由它的位置,取向和一组描述其形状,通过拟合点分布模型到母鸡的轮廓获得的参数的。在视频序列中应用该算法随后的图像,母鸡的姿势参数的连续值表示序列中的母鸡的行为。一种用于每种行为类型模型由聚类组从与已知行为训练视频序列计算姿势参数化的,由经过培训的行为学家提供创建。对于在新的视频片段中的未知行为的分类,它的姿势参数的时间序列都使用相同的算法计算和匹配到每个训练的行为模型。然后在新的视频片段的行为归为行为类型,该模型给出的最佳匹配。该系统是在一个笼子上的一组单个的母鸡超过14000视频片段的测试,将含有六种行为类型之一的每个片段。平均分类率为70%〜96%,除了啄食21%,由于鸡的头一个不可靠的跟踪。睡觉(96%)和站立(90%),得到最好的结果。

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