Lowe Gemma, McCane Brendan, Sutherland Mhairi, Waas Joe, Schaefer Allan, Cox Neil, Stewart Mairi
InterAg, Ruakura Research Centre, Hamilton 3214, New Zealand.
School of Science, The University of Waikato, Hamilton 3216, New Zealand.
Animals (Basel). 2020 Feb 12;10(2):292. doi: 10.3390/ani10020292.
As the reliance upon automated systems in the livestock industry increases, technologies need to be developed which can be incorporated into these systems to monitor animal health and welfare. Infrared thermography (IRT) is one such technology that has been used for monitoring animal health and welfare and, through automation, has the potential to be integrated into automated systems on-farm. This study reports on an automated system for collecting thermal infrared images of calves and on the development and validation of an algorithm capable of automatically detecting and analysing the eye and cheek regions from those images. Thermal infrared images were collected using an infrared camera integrated into an automated calf feeder. Images were analysed automatically using an algorithm developed to determine the maximum eye and cheek (3 × 3-pixel and 9 × 9-pixel areas) temperatures in a given image. Additionally, the algorithm determined the maximum temperature of the entire image (image maximum temperature). In order to validate the algorithm, a subset of 350 images analysed using the algorithm were also analysed manually. Images analysed using the algorithm were highly correlated with manually analysed images for maximum image (R = 1.00), eye (R = 0.99), cheek 3 × 3-pixel (R = 0.85) and cheek 9 × 9-pixel (R = 0.90) temperatures. These findings demonstrate the algorithm to be a suitable method of analysing the eye and cheek regions from thermal infrared images. Validated as a suitable method for automatically detecting and analysing the eye and cheek regions from thermal infrared images, the integration of IRT into automated on-farm systems has the potential to be implemented as an automated method of monitoring calf health and welfare.
随着畜牧业对自动化系统的依赖程度不断提高,需要开发能够融入这些系统的技术,以监测动物的健康和福利状况。红外热成像(IRT)就是这样一种技术,它已被用于监测动物的健康和福利,并且通过自动化,有潜力集成到农场的自动化系统中。本研究报告了一种用于采集犊牛热红外图像的自动化系统,以及一种能够从这些图像中自动检测和分析眼睛及脸颊区域的算法的开发与验证情况。使用集成在自动犊牛饲养器中的红外相机采集热红外图像。使用开发的算法对图像进行自动分析,以确定给定图像中眼睛和脸颊(3×3像素和9×9像素区域)的最高温度。此外,该算法还确定了整个图像的最高温度(图像最高温度)。为了验证该算法,还对使用该算法分析的350幅图像的子集进行了人工分析。使用该算法分析的图像与人工分析的图像在图像最高温度(R = 1.00)、眼睛(R = 0.99)、脸颊3×3像素(R = 0.85)和脸颊9×9像素(R = 0.90)温度方面高度相关。这些发现表明该算法是一种从热红外图像中分析眼睛和脸颊区域的合适方法。作为一种从热红外图像中自动检测和分析眼睛及脸颊区域的合适方法得到验证后,将红外热成像集成到农场自动化系统中有可能作为一种监测犊牛健康和福利的自动化方法来实施。