基于改进几何活动轮廓模型的母猪红外图像分割算法
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北京市科委计划资助项目(D141100003814003)


Segmentation of Thermal Infrared Image for Sow Based on Improved Convex Active Contours
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    摘要:

    基于母猪热红外视频在线检测的实时性和稳健性,提出了一种快速高效的母猪热红外图像轮廓分割方法。采用点运算进行对比度增强,去除大部分背景像素,减少图像数据处理量,减弱热红外图像中复杂背景的干扰;提出了能够随着图像整体对比度和局部对比度变化的权值函数,从而动态地均衡图像全局能量和局部能量的权重;结合LGIF模型,建立了一个改进权值的LGIF活动轮廓模型。应用不同分割方法对在不同姿态、不同光照、不同品种情况下拍摄的300幅母猪热红外图像进行试验,结果分析表明,所提方法能更高效地将母猪轮廓从养殖场猪圈环境中提取出来,单幅图像平均分割时间为49.67 s,正确分割率达到98%以上,研究结果可为后续基于在线红外视频监测研究提供技术支撑。

    Abstract:

    In order to solve the on-line detection of the body surface temperature for sow based on thermal infrared video, the image segmentation method for the fast and efficient target detection was proposed. The thermal infrared image of the sow has the features of low pixel, low contrast and edge blur. In piggery environment conditions, the sow body temperature and background radiance were the main factors to affect thermal infrared image brightness and handling results. Because of the strong correlation between the intensity of the background radiation and light intensity, in order to study the effect of background radiation on the thermal infrared image segmentation, the thermal infrared images of different illumination intensities were collected. Firstly, the point operation was used to enhance the contrast enhancement; and then, instead of a constant value for ω , a weight function that varies dynamically with the global and local contrast of the image was chosen, so as to dynamically balance the global energy and the local energy; finally, an improved LGIF model was established with the global fitting energy and the local energy. 300 thermal infrared images were collected by using infrared thermal imaging system, and the image segmentation experiments were performed. These pictures were taken in different positions, light conditions, and sow varieties. Classification tests were carried out under three conditions of low light intensity (100~600 lx), middle illumination (600~1 000 lx) and high illumination (1 500~2 500 lx). In order to analyze the accuracy and real-time performance of the algorithm, the average running time and the correct segmentation rate of different segmentation algorithms were calculated respectively. The cause of the poor effect of the partial sample was analyzed, and the direction of improvement was put forward. Experimental results show that the improved method can extract the sow more efficiently, and the average single image segmentation time was 49.67 s, the correct segmentation rate reached more than 98% which demonstrated the accuracy and superiority of the proposed model.

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马丽,段玉瑶,宗泽,刘刚.基于改进几何活动轮廓模型的母猪红外图像分割算法[J].农业机械学报,2015,46(S1):180-186. Ma Li, Duan Yuyao, Zong Ze, Liu Gang. Segmentation of Thermal Infrared Image for Sow Based on Improved Convex Active Contours[J]. Transactions of the Chinese Society for Agricultural Machinery,2015,46(S1):180-186.

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  • 收稿日期:2015-10-28
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  • 在线发布日期: 2015-12-30
  • 出版日期: 2015-12-31