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Temporally consistent snow cover estimation from noisy, irregularly sampled measurements

机译:从嘈杂,不规则采样的测量中临时一致的积雪估算

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We propose a method for accurate and temporally consistent surface classification in the presence of noisy, irregularly sampled measurements, and apply it to the estimation of snow coverage over time. The input imagery is extremely challenging, with large variations in lighting and weather distorting the measurements. Initial snow cover estimations are obtained using a Gaussian Mixture Model of color. To achieve a temporally consistent snow cover estimation, we use a Markov Random Field that penalizes rapid fluctuations in the snow state, and show that the penalty term needs to be quite large, resulting in slow reactivity to changes. We thus propose a classifier to separate good from uninformative images, which allows to use a smaller penalty term. We show that the incorporation of domain knowledge to discard uninformative images leads to better reactivity to changes in snow coverage as well as more accurate snow cover estimations.
机译:我们提出了一种在存在嘈杂,不规则采样的测量的情况下进行准确且时间上一致的表面分类的方法,并将其应用于随时间推移的积雪估算。输入图像极具挑战性,光线和天气变化很大,会使测量结果失真。使用颜色的高斯混合模型获得初始雪盖估计。为了实现时间上一致的积雪估算,我们使用马尔可夫随机场对雪状态下的快速波动进行惩罚,并表明惩罚项需要很大,从而导致对变化的反应较慢。因此,我们提出了一种将商品图片与非图片图片分开的分类器,该分类器允许使用较小的惩罚项。我们表明,合并领域知识以丢弃无信息的图像会导致对积雪变化以及更准确的积雪估计具有更好的反应性。

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