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Smoke Detection for Videos Based on Adaptive Learning Rate and Linear Fitting Algorithm

机译:基于自适应学习率和线性拟合算法的视频烟雾检测

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In the process of smoke detection, the brightness and texture are varying in each frame, which brings interference to the feature extraction and reduces the accuracy of smoke detection. In this paper, the adaptive learning rate model associated with those noise objects is established, which provides a good regularization of background adaptation for Gaussian Mixture Models (GMM). Next, the linear fitting method is combined with the smoke motion and shape features to detect smoke objects. Experiments have shown that the algorithm can adapt to the illuminative changes in various scenes and detect the smoke objects with a very low false alarm rate.
机译:在烟雾检测的过程中,每一帧的亮度和纹理都不同,这会干扰特征提取并降低烟雾检测的准确性。本文建立了与那些噪声对象相关的自适应学习率模型,为高斯混合模型(GMM)的背景自适应提供了良好的正则化。接下来,将线性拟合方法与烟雾运动和形状特征相结合,以检测烟雾物体。实验表明,该算法可以适应各种场景下的照明变化,并以极低的误报率检测烟雾物体。

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