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首页> 外文期刊>International Journal of Agricultural and Biological Engineering >Multi target pigs tracking loss correction algorithm based on Faster R-CNN
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Multi target pigs tracking loss correction algorithm based on Faster R-CNN

机译:基于Faster R-CNN的多目标猪跟踪损失校正算法

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In order to solve the problem that target tracking frames are lost during the visual tracking of pigs, this research proposed an algorithm for multi target pigs tracking loss correction based on Faster R-CNN. The video of live pigs was processed by Faster R-CNN to get the object bounding box. Then, the SURF and background difference method were combined to predict whether the target pig will be occluded in the next frame. According to the occlusion condition, the maximum value of the horizontal and vertical coordinate offset of the bounding box in the adjacent two frames of the frame image in continuous N (N is the value of the video frame rate) were calculated. When bounding boxes in a video frame are merged into one bounding box, this maximum value was used to correct the current tracking frame offset in order to achieve the purpose of solving the tracking target loss problem. The experiment results showed that the success rate range of RP Faster-RCNN in the data set was 80%-97% while in term of Faster-RCNN was 40%-85%. And the average center point error of RP Faster-RCNN was 1.46 lower than Faster-RCNN which was about 2.60. The new algorithm was characterized by good robustness and adaptability, which could solve the problem of missing tracking target and accurately track multiple targets when the targets occlude each other.
机译:为解决猪视觉跟踪中目标跟踪帧丢失的问题,提出了一种基于Faster R-CNN的多目标猪跟踪损失校正算法。 Faster R-CNN处理了活猪的视频,以得到对象边界框。然后,将SURF和背景差异方法结合起来,以预测目标猪是否会在下一帧中被遮挡。根据遮挡条件,计算连续N帧图像的相邻两帧中边框的水平和垂直坐标偏移的最大值(N是视频帧速率的值)。当将视频帧中的边界框合并为一个边界框时,该最大值用于校正当前的跟踪帧偏移,以达到解决跟踪目标丢失问题的目的。实验结果表明,RP Faster-RCNN在数据集中的成功率为80%-97%,而Faster-RCNN的成功率为40%-85%。 RP Faster-RCNN的平均中心点误差比Faster-RCNN的约2.60低1.46。新算法具有良好的鲁棒性和适应性,可以解决跟踪目标丢失的问题,并在目标相互遮挡时准确跟踪多个目标。

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