Abstract

Abstract. The increasing urbanization and industrialization have led to wetland losses in estuarine area of Mingjiang River over past three decades. There has been increasing attention given to produce wetland inventories using remote sensing and GIS technology. Due to inconsistency training site and training sample, traditionally pixel-based image classification methods can’t achieve a comparable result within different organizations. Meanwhile, object-oriented image classification technique shows grate potential to solve this problem and Landsat moderate resolution remote sensing images are widely used to fulfill this requirement. Firstly, the standardized atmospheric correct, spectrally high fidelity texture feature enhancement was conducted before implementing the object-oriented wetland classification method in eCognition. Secondly, we performed the multi-scale segmentation procedure, taking the scale, hue, shape, compactness and smoothness of the image into account to get the appropriate parameters, using the top and down region merge algorithm from single pixel level, the optimal texture segmentation scale for different types of features is confirmed. Then, the segmented object is used as the classification unit to calculate the spectral information such as Mean value, Maximum value, Minimum value, Brightness value and the Normalized value. The Area, length, Tightness and the Shape rule of the image object Spatial features and texture features such as Mean, Variance and Entropy of image objects are used as classification features of training samples. Based on the reference images and the sampling points of on-the-spot investigation, typical training samples are selected uniformly and randomly for each type of ground objects. The spectral, texture and spatial characteristics of each type of feature in each feature layer corresponding to the range of values are used to create the decision tree repository. Finally, with the help of high resolution reference images, the random sampling method is used to conduct the field investigation, achieve an overall accuracy of 90.31 %, and the Kappa coefficient is 0.88. The classification method based on decision tree threshold values and rule set developed by the repository, outperforms the results obtained from the traditional methodology. Our decision tree repository and rule set based object-oriented classification technique was an effective method for producing comparable and consistency wetlands data set.

Highlights

  • One of the common data sources for wetland monitoring and mapping is satellite images

  • Due to inconsistency training site and training sample, the supervised classification method used for identification of shallow and small water body, which plays a vital role in the wetlands accuracy improvement, is inefficient and inaccuracy, it results incomparable data set within different organizations

  • The reasonable threshold value of each type of wetland feature characteristic parameter is needed for objectoriented classification method, thereby effectively improved the classification accuracy

Read more

Summary

Introduction

One of the common data sources for wetland monitoring and mapping is satellite images. Due to inconsistency training site and training sample, the supervised classification method used for identification of shallow and small water body, which plays a vital role in the wetlands accuracy improvement, is inefficient and inaccuracy, it results incomparable data set within different organizations. The high training site and sample quality of wetland is needed for object-oriented classification method It can take full advantage of the shape and texture information provided by satellite data, and can improve the classification accuracy of wetland . The reasonable threshold value of each type of wetland feature characteristic parameter is needed for objectoriented classification method, thereby effectively improved the classification accuracy. These are the questions that provide the motivation for this paper

Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.