A kinect-based segmentation of touching-pigs for real-time monitoring

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Abstract

Segmenting touching-pigs in real-time is an important issue for surveillance cameras intended for the 24-h tracking of individual pigs. However, methods to do so have not yet been reported. We particularly focus on the segmentation of touching-pigs in a crowded pig room with low-contrast images obtained using a Kinect depth sensor. We reduce the execution time by combining object detection techniques based on a convolutional neural network (CNN) with image processing techniques instead of applying time-consuming operations, such as optimization-based segmentation. We first apply the fastest CNN-based object detection technique (i.e., You Only Look Once, YOLO) to solve the separation problem for touching-pigs. If the quality of the YOLO output is not satisfied, then we try to find the possible boundary line between the touching-pigs by analyzing the shape. Our experimental results show that this method is effective to separate touching-pigs in terms of both accuracy (i.e., 91.96%) and execution time (i.e., real-time execution), even with low-contrast images obtained using a Kinect depth sensor.

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CITATION STYLE

APA

Ju, M., Choi, Y., Seo, J., Sa, J., Lee, S., Chung, Y., & Park, D. (2018). A kinect-based segmentation of touching-pigs for real-time monitoring. Sensors (Switzerland), 18(6). https://doi.org/10.3390/s18061746

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