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首页> 外文期刊>EURASIP journal on advances in signal processing >A Conditional Entropy-Based Independent Component Analysis for Applications in Human Detection and Tracking
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A Conditional Entropy-Based Independent Component Analysis for Applications in Human Detection and Tracking

机译:基于条件熵的独立分量分析在人体检测与跟踪中的应用

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We present in this paper a modified independent component analysis (mICA) based on the conditional entropy to discriminate unsorted independent components. We make use of the conditional entropy to select an appropriate subset of the ICA features with superior capability in classification and apply support vector machine (SVM) to recognizing patterns of human and nonhuman. Moreover, we use the models of background images based on Gaussian mixture model (GMM) to handle images with complicated backgrounds. Also, the color-based shadow elimination and head models in ellipse shapes are combined to improve the performance of moving objects extraction and recognition in our system. Our proposed tracking mechanism monitors the movement of humans, animals, or vehicles within a surveillance area and keeps tracking the moving pedestrians by using the color information in HSV domain. Our tracking mechanism uses the Kalman filter to predict locations of moving objects for the conditions in lack of color information of detected objects. Finally, our experimental results show that our proposed approach can perform well for real-time applications in both indoor and outdoor environments.
机译:我们在本文中提出了一种基于条件熵的改进的独立成分分析(mICA),以区分未排序的独立成分。我们利用条件熵来选择具有出色分类能力的ICA特征的适当子集,并将支持向量机(SVM)应用于识别人类和非人类的模式。此外,我们使用基于高斯混合模型(GMM)的背景图像模型来处理背景复杂的图像。此外,基于颜色的阴影消除和椭圆形状的头部模型相结合,可以改善我们系统中运动物体的提取和识别性能。我们提出的跟踪机制可监视监视区域内的人,动物或车辆的运动,并通过使用HSV域中的颜色信息来跟踪行人。我们的跟踪机制使用卡尔曼滤波器来预测运动对象的位置,以针对缺少检测到对象的颜色信息的情况。最后,我们的实验结果表明,我们提出的方法可以在室内和室外环境中的实时应用中很好地发挥作用。

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