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Real-time classification of humans versus animals using profiling sensors and hidden Markov tree model

机译:使用轮廓传感器和隐马尔可夫树模型对人与动物进行实时分类

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Linear pyroelectric array sensors have enabled useful classifications of objects such as humans and animals to be performed with relatively low-cost hardware in border and perimeter security applications. Ongoing research has sought to improve the performance of these sensors through signal processing algorithms. In the research presented here, we introduce the use of hidden Markov tree (HMT) models for object recognition in images generated by linear pyroelectric sensors. HMTs are trained to statistically model the wavelet features of individual objects through an expectation-maximization learning process. Human versus animal classification for a test object is made by evaluating its wavelet features against the trained HMTs using the maximum-likelihood criterion. The classification performance of this approach is compared to two other techniques; a texture, shape, and spectral component features (TSSF) based classifier and a speeded-up robust feature (SURF) classifier. The evaluation indicates that among the three techniques, the wavelet-based HMT model works well, is robust, and has improved classification performance compared to a SURF-based algorithm in equivalent computation time. When compared to the TSSF-based classifier, the HMT model has a slightly degraded performance but almost an order of magnitude improvement in computation time enabling real-time implementation.
机译:线性热释电阵列传感器已使人和动物等物体的有用分类能够在边界和周边安全应用中使用成本相对较低的硬件进行。正在进行的研究试图通过信号处理算法来改善这些传感器的性能。在这里提出的研究中,我们介绍了使用隐马尔可夫树(HMT)模型在线性热释电传感器生成的图像中进行目标识别的方法。训练HMT通过期望最大化学习过程对单个对象的小波特征进行统计建模。通过使用最大似然标准针对训练过的HMT评估其小波特征,对测试对象进行人与动物分类。将该方法的分类性能与其他两种技术进行了比较。基于纹理,形状和光谱成分特征(TSSF)的分类器和加速鲁棒特征(SURF)的分类器。评估表明,与基于SURF的算法相比,基于小波的HMT模型在等效的计算时间上运行良好,稳健并且具有改进的分类性能。与基于TSSF的分类器相比,HMT模型的性能略有下降,但计算时间却提高了近一个数量级,从而可以实时实施。

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