Cow detection and tracking system utilizing multi-feature tracking algorithm.

Journal: Scientific reports
PMID:

Abstract

In modern cattle farm management systems, video-based monitoring has become important in analyzing the high-level behavior of cattle for monitoring their health and predicting calving for providing timely assistance. Conventionally, sensors have been used for detecting and tracking their activities. As the body-attached sensors cause stress, video cameras can be used as an alternative. However, identifying and tracking individual cattle can be difficult, especially for black and brown varieties that are so similar in appearance. Therefore, we propose a new method of using video cameras for recognizing cattle and tracking their whereabouts. In our approach, we applied a combination of deep learning and image processing techniques to build a robust system. The proposed system processes images in separate stages, namely data pre-processing, cow detection, and cow tracking. Cow detection is performed using a popular instance segmentation network. In the cow tracking stage, for successively associating each cow with the corresponding one in the next frame, we employed the following three features: cow location, appearance features, as well as recent features of the cow region. In doing so, we simply exploited the distance between two gravity center locations of the cow regions. As color and texture suitably define the appearance of an object, we analyze the most appropriate color space to extract color moment features and use a Co-occurrence Matrix (CM) for textural representation. Deep features are extracted from recent cow images using a Convolutional Neural Network (CNN features) and are also jointly applied in the tracking process to boost system performance. We also proposed a robust Multiple Object Tracking (MOT) algorithm for cow tracking by employing multiple features from the cow region. The experimental results proved that our proposed system could handle the problems of MOT and produce reliable performance.

Authors

  • Cho Cho Mar
    Graduate School of Engineering, University of Miyazaki, Miyazaki, 889-2192, Japan.
  • Thi Thi Zin
    Graduate School of Engineering, University of Miyazaki, Miyazaki 889-2192, Japan.
  • Pyke Tin
    International Relation Center, University of Miyazaki, Miyazaki 889-2192, Japan.
  • Kazuyuki Honkawa
    Division of Research and Training for Livestock and Veterinary Clinic, Honkawa Ranch, Hita, Oita 877-0056, Japan.
  • Ikuo Kobayashi
    Field Science Center, Faculty of Agriculture, University of Miyazaki, Miyazaki 889-2192, Japan.
  • Yoichiro Horii
    Division of Research and Training for Livestock and Veterinary Clinic, Honkawa Ranch, Hita, Oita 877-0056, Japan.