Lee Jonguk, Jin Long, Park Daihee, Chung Yongwha
Department of Computer and Information Science, Korea University, Sejong Campus, Sejong City 30019, Korea.
Ctrip Co., 99 Fu Quan Road, IT Security Center, Shanghai 200335, China.
Sensors (Basel). 2016 May 2;16(5):631. doi: 10.3390/s16050631.
Aggression among pigs adversely affects economic returns and animal welfare in intensive pigsties. In this study, we developed a non-invasive, inexpensive, automatic monitoring prototype system that uses a Kinect depth sensor to recognize aggressive behavior in a commercial pigpen. The method begins by extracting activity features from the Kinect depth information obtained in a pigsty. The detection and classification module, which employs two binary-classifier support vector machines in a hierarchical manner, detects aggressive activity, and classifies it into aggressive sub-types such as head-to-head (or body) knocking and chasing. Our experimental results showed that this method is effective for detecting aggressive pig behaviors in terms of both cost-effectiveness (using a low-cost Kinect depth sensor) and accuracy (detection and classification accuracies over 95.7% and 90.2%, respectively), either as a standalone solution or to complement existing methods.
猪之间的攻击行为会对集约化猪舍的经济回报和动物福利产生不利影响。在本研究中,我们开发了一种非侵入性、低成本的自动监测原型系统,该系统使用Kinect深度传感器来识别商业猪圈中的攻击行为。该方法首先从猪舍中获取的Kinect深度信息中提取活动特征。检测和分类模块以分层方式使用两个二分类支持向量机,检测攻击活动,并将其分类为诸如头对头(或身体)碰撞和追逐等攻击子类型。我们的实验结果表明,该方法无论是作为独立解决方案还是补充现有方法,在成本效益(使用低成本的Kinect深度传感器)和准确性(检测和分类准确率分别超过95.7%和90.2%)方面,对于检测猪的攻击行为都是有效的。