论文标题
使用颌骨运动的基于细分市场的特征来识别放牧牛的觅食活动
Using segment-based features of jaw movements to recognize foraging activities in grazing cattle
论文作者
论文摘要
精密牲畜养殖通过使用传感器信息和通信技术来优化牲畜生产,以支持决策,并积极实时地实时。在监测觅食行为的可用技术中,声学方法是高度可靠且可重复的,但可以接受进一步的计算改进,以提高对觅食活动的识别的精度和特异性。在这项研究中,提出了一种称为JAW运动段的觅食活动识别器(JMFAR)的算法。该方法基于颌骨运动声音的时间,统计和频谱特征的计算和分析,以检测反弹和放牧。它们之所以称为JM段特征,是因为它们是从声音段中提取的,并期望捕获整个段的JM信息,而不是单个JM。提出并测试了该方法的两个变体:(i)时间和统计功能仅JMFAR-NS; (ii)特征选择过程(JMFAR-SEL)。 JMFAR在自由放牧环境中注册的信号上进行了测试,平均加权F1得分为93%。然后,将其与最先进的算法进行了比较,显示出估计放牧的效果的提高(+19%)。 JMFAR-NS变体将计算成本降低了25.4%,但性能略低于JMFAR。 JMFAR-NS的良好性能和低计算成本支持在低成本嵌入式系统中使用此算法变体实时实现的可行性。本出版物中介绍的方法受申请专利申请的保护:AR P20220100910。
Precision livestock farming optimizes livestock production through the use of sensor information and communication technologies to support decision making, proactively and near real-time. Among available technologies to monitor foraging behavior, the acoustic method has been highly reliable and repeatable, but can be subject to further computational improvements to increase precision and specificity of recognition of foraging activities. In this study, an algorithm called Jaw Movement segment-based Foraging Activity Recognizer (JMFAR) is proposed. The method is based on the computation and analysis of temporal, statistical and spectral features of jaw movement sounds for detection of rumination and grazing bouts. They are called JM-segment features because they are extracted from a sound segment and expect to capture JM information of the whole segment rather than individual JMs. Two variants of the method are proposed and tested: (i) the temporal and statistical features only JMFAR-ns; and (ii) a feature selection process (JMFAR-sel). The JMFAR was tested on signals registered in a free grazing environment, achieving an average weighted F1-score of 93%. Then, it was compared with a state-of-the-art algorithm, showing improved performance for estimation of grazing bouts (+19%). The JMFAR-ns variant reduced the computational cost by 25.4%, but achieved a slightly lower performance than the JMFAR. The good performance and low computational cost of JMFAR-ns supports the feasibility of using this algorithm variant for real-time implementation in low-cost embedded systems. The method presented within this publication is protected by a pending patent application: AR P20220100910.