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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Integrating intermediate inputs from partially classified images within a hybrid classification framework: An impervious surface estimation example
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Integrating intermediate inputs from partially classified images within a hybrid classification framework: An impervious surface estimation example

机译:在混合分类框架内集成来自部分分类图像的中间输入:一个不透水的表面估计示例

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摘要

With the constant proliferation of computational power, our ability to develop hybrid classifiers has improved. Hybrid classifiers integrate results from multiple algorithms and often improve classification accuracy. In this paper, a hybrid classification framework was used to evaluate two research hypotheses: i) can manipulated results from prior classifiers ("intermediate inputs" (IIs)) improve classification accuracy in subsequent classification steps. and ii) is there an optimal dataset proportion for creation and usage of intermediate inputs. These additional intermediate inputs were based on spatial and texture statistics calculated on a partially classified image. The implementation of intermediate inputs on an impervious surface classification task using a 2001 Landsat ETM+ image from central New York was demonstrated. The results suggested that there was an average accuracy improvement of 3.6% (maximum 6.6%) by using intermediate inputs. These improvements were proved statistically significant by a Z-test and tended to increase as classification difficulty increased. The experiments in this paper also showed that there was an optimal point that balanced the number of pixels and pixel classification accuracy from prior steps used to produce intermediate inputs. Additionally, some traditional problems such as separation of impervious surfaces and soil were successfully tackled through intermediate inputs. The concept of the intermediate inputs may easily apply to other sensors and/or ground features.
机译:随着计算能力的不断提高,我们开发混合分类器的能力得到了提高。混合分类器整合了多种算法的结果,通常可以提高分类准确性。在本文中,混合分类框架用于评估两个研究假设:i)可以操纵来自先前分类器(“中间输入”(IIs))的结果,从而在后续分类步骤中提高分类准确性。 ii)是否存在用于创建和使用中间输入的最佳数据集比例。这些额外的中间输入基于在部分分类的图像上计算出的空间和纹理统计信息。演示了如何使用来自纽约中部的2001年Landsat ETM +图像对不渗透的表面分类任务执行中间输入。结果表明,通过使用中间输入,平均准确度提高了3.6%(最大6.6%)。通过Z检验证明这些改进具有统计学意义,并且随着分类难度的增加而趋于增加。本文中的实验还表明,存在一个最佳点,该点平衡了用于产生中间输入的先前步骤的像素数量和像素分类精度。另外,通过中间投入成功地解决了一些传统问题,例如不透水表面和土壤的分离。中间输入的概念可以轻松地应用于其他传感器和/或地面功能。

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