{"title":"调制传递函数对高空间分辨率遥感图像分割质量的影响","authors":"Jiehai Cheng, Yanchen Bo, X. Ji","doi":"10.1109/EORSA.2012.6261154","DOIUrl":null,"url":null,"abstract":"The Modulation Transfer Function (MTF) is a widely used parameter to assess the quality of an imaging system. For the end user, the system MTF can be used to compare the intrinsic quality of imagery from various sources as well as analytically equalize the sharpness of multiple images from different sensors. However, due to the vibration during the satellite launch or some change in material properties, the MTF characteristic may change. As a result, imagery quality may change. However, Current researches mostly lie in how to measure MTF, and don't detailedly analyze the influence of MTF on imagery quality. Therefore, a lot of potential research work is desirable to discuss the relation between MTF and imagery quality. With regard to high spatial resolution remote sensing imagery, MTF mainly affects edge sharpness of imagery. And edge sharpness of imagery can affect imagery segmentation quality. So, the goal of this study is to analyze the effect of MTF on high spatial resolution remote sensing imagery segmentation quality. The paper firstly introduced the algorithm and steps of measuring MTF value based on high spatial resolution remote sensing imagery. Next, a typical imagery, which was derived from an acquisition over Florida, was selected for calculating MTF. In order to simulate different MTF values, the Gaussian PSF (Point Spread Function) was artificially added into the selected imagery. As a result, we can acquire a series of images, which had different MTF values. Then, the images were segmented by the object-based image analyst tool, such as eCongniton Developer 8.64, Feature Analyst, ENVI FX, et al. Finally, we compared the different segmentation quality by the methods of the segmentation accuracy assessment. The Area-Fit-Index (AFI) and Offspring-Loyalty (OL) were used to assess the segmentation accuracy of the images. The paper randomly selected 410 segmented polygons for assessing segmentation accuracy. The results of AFI and OL showed that the segmentation accuracy was lower while MTF value was lower. While MTF dropped still further, the AFI became negative number, −0.04. This showed that the edge profiles of the segmented objects mostly exceeded the edge profiles of the reference objects. The research also demonstrated that different land types had different segmentation quality on the condition of the same MTF value.","PeriodicalId":132133,"journal":{"name":"2012 Second International Workshop on Earth Observation and Remote Sensing Applications","volume":"70 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2012-06-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"Effect of Modulation Transfer Function on high spatial resolution remote sensing imagery segmentation quality\",\"authors\":\"Jiehai Cheng, Yanchen Bo, X. Ji\",\"doi\":\"10.1109/EORSA.2012.6261154\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The Modulation Transfer Function (MTF) is a widely used parameter to assess the quality of an imaging system. For the end user, the system MTF can be used to compare the intrinsic quality of imagery from various sources as well as analytically equalize the sharpness of multiple images from different sensors. However, due to the vibration during the satellite launch or some change in material properties, the MTF characteristic may change. As a result, imagery quality may change. However, Current researches mostly lie in how to measure MTF, and don't detailedly analyze the influence of MTF on imagery quality. Therefore, a lot of potential research work is desirable to discuss the relation between MTF and imagery quality. With regard to high spatial resolution remote sensing imagery, MTF mainly affects edge sharpness of imagery. And edge sharpness of imagery can affect imagery segmentation quality. So, the goal of this study is to analyze the effect of MTF on high spatial resolution remote sensing imagery segmentation quality. The paper firstly introduced the algorithm and steps of measuring MTF value based on high spatial resolution remote sensing imagery. Next, a typical imagery, which was derived from an acquisition over Florida, was selected for calculating MTF. In order to simulate different MTF values, the Gaussian PSF (Point Spread Function) was artificially added into the selected imagery. As a result, we can acquire a series of images, which had different MTF values. Then, the images were segmented by the object-based image analyst tool, such as eCongniton Developer 8.64, Feature Analyst, ENVI FX, et al. Finally, we compared the different segmentation quality by the methods of the segmentation accuracy assessment. The Area-Fit-Index (AFI) and Offspring-Loyalty (OL) were used to assess the segmentation accuracy of the images. The paper randomly selected 410 segmented polygons for assessing segmentation accuracy. The results of AFI and OL showed that the segmentation accuracy was lower while MTF value was lower. While MTF dropped still further, the AFI became negative number, −0.04. This showed that the edge profiles of the segmented objects mostly exceeded the edge profiles of the reference objects. 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引用次数: 2
摘要
调制传递函数(MTF)是评价成像系统质量的一个广泛使用的参数。对于最终用户来说,系统MTF可以用来比较来自不同来源的图像的内在质量,以及分析平衡来自不同传感器的多个图像的清晰度。然而,由于卫星发射过程中的振动或材料性能的某些变化,MTF特性可能会发生变化。因此,图像质量可能会发生变化。然而,目前的研究主要集中在如何测量MTF上,并没有详细分析MTF对图像质量的影响。因此,探讨MTF与图像质量之间的关系是值得开展大量潜在研究工作的。对于高空间分辨率遥感图像,MTF主要影响图像的边缘清晰度。图像的边缘清晰度会影响图像分割的质量。因此,本研究的目的是分析MTF对高空间分辨率遥感图像分割质量的影响。本文首先介绍了基于高空间分辨率遥感影像测量MTF值的算法和步骤。接下来,选取了一幅典型的图像,该图像来自佛罗里达州上空的一次采集,用于计算MTF。为了模拟不同的MTF值,在选择的图像中人为地添加高斯点扩散函数(PSF)。因此,我们可以获得一系列具有不同MTF值的图像。然后,使用基于对象的图像分析工具,如eCongniton Developer 8.64、Feature analyst、ENVI FX等,对图像进行分割。最后,通过分割精度评价方法对不同的分割质量进行了比较。采用面积拟合指数(area - fit index, AFI)和后代忠诚度(后代忠诚度,OL)来评估图像分割的准确性。本文随机选取410个被分割多边形进行分割精度评估。结果表明,AFI和OL的分割精度较低,MTF值较低。MTF进一步下降,AFI变为负值,为- 0.04。这表明,被分割对象的边缘轮廓大多超过参考对象的边缘轮廓。研究还表明,在相同MTF值的条件下,不同土地类型的分割质量不同。
Effect of Modulation Transfer Function on high spatial resolution remote sensing imagery segmentation quality
The Modulation Transfer Function (MTF) is a widely used parameter to assess the quality of an imaging system. For the end user, the system MTF can be used to compare the intrinsic quality of imagery from various sources as well as analytically equalize the sharpness of multiple images from different sensors. However, due to the vibration during the satellite launch or some change in material properties, the MTF characteristic may change. As a result, imagery quality may change. However, Current researches mostly lie in how to measure MTF, and don't detailedly analyze the influence of MTF on imagery quality. Therefore, a lot of potential research work is desirable to discuss the relation between MTF and imagery quality. With regard to high spatial resolution remote sensing imagery, MTF mainly affects edge sharpness of imagery. And edge sharpness of imagery can affect imagery segmentation quality. So, the goal of this study is to analyze the effect of MTF on high spatial resolution remote sensing imagery segmentation quality. The paper firstly introduced the algorithm and steps of measuring MTF value based on high spatial resolution remote sensing imagery. Next, a typical imagery, which was derived from an acquisition over Florida, was selected for calculating MTF. In order to simulate different MTF values, the Gaussian PSF (Point Spread Function) was artificially added into the selected imagery. As a result, we can acquire a series of images, which had different MTF values. Then, the images were segmented by the object-based image analyst tool, such as eCongniton Developer 8.64, Feature Analyst, ENVI FX, et al. Finally, we compared the different segmentation quality by the methods of the segmentation accuracy assessment. The Area-Fit-Index (AFI) and Offspring-Loyalty (OL) were used to assess the segmentation accuracy of the images. The paper randomly selected 410 segmented polygons for assessing segmentation accuracy. The results of AFI and OL showed that the segmentation accuracy was lower while MTF value was lower. While MTF dropped still further, the AFI became negative number, −0.04. This showed that the edge profiles of the segmented objects mostly exceeded the edge profiles of the reference objects. The research also demonstrated that different land types had different segmentation quality on the condition of the same MTF value.