Abstract

Machine learning has been successfully used for object recognition within images. Due to the complexity of the spectrum and texture of construction and demolition waste (C&DW), it is difficult to construct an automatic identification method for C&DW based on machine learning and remote sensing data sources. Machine learning includes many types of algorithms; however, different algorithms and parameters have different identification effects on C&DW. Exploring the optimal method for automatic remote sensing identification of C&DW is an important approach for the intelligent supervision of C&DW. This study investigates the megacity of Beijing, which is facing high risk of C&DW pollution. To improve the classification accuracy of C&DW, buildings, vegetation, water, and crops were selected as comparative training samples based on the Google Earth Engine (GEE), and Sentinel-2 was used as the data source. Three classification methods of typical machine learning algorithms (classification and regression trees (CART), random forest (RF), and support vector machine (SVM)) were selected to classify the C&DW from remote sensing images. Using empirical methods, the experimental trial method, and the grid search method, the optimal parameterization scheme of the three classification methods was studied to determine the optimal method of remote sensing identification of C&DW based on machine learning. Through accuracy evaluation and ground verification, the overall recognition accuracies of CART, RF, and SVM for C&DW were 73.12%, 98.05%, and 85.62%, respectively, under the optimal parameterization scheme determined in this study. Among these algorithms, RF was a better C&DW identification method than were CART and SVM when the number of decision trees was 50. This study explores the robust machine learning method for automatic remote sensing identification of C&DW and provides a scientific basis for intelligent supervision and resource utilization of C&DW.

Highlights

  • IntroductionConstruction and demolition waste (C&DW) refers to all types of solid waste generated during construction, transformation, decoration, demolition, and laying of various buildings and structures and their auxiliary facilities, primarily including residue soil, waste concrete, broken bricks and tiles, waste asphalt, waste pipe materials, and waste wood [1]

  • Based on the spectral and textural characteristics of the satellite data, this study focused on five categories, buildings, vegetation, water bodies, crops, and construction and demolition waste (C&DW), to perform target recognition

  • Intelligent identification of C&DW is an important method of waste supervision and resource utilization

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Summary

Introduction

Construction and demolition waste (C&DW) refers to all types of solid waste generated during construction, transformation, decoration, demolition, and laying of various buildings and structures and their auxiliary facilities, primarily including residue soil, waste concrete, broken bricks and tiles, waste asphalt, waste pipe materials, and waste wood [1]. China will inevitably produce more C&DW in the future due to its rapid economic development. Based on the available statistics, the output of solid domestic waste has reached 7 billion tons, C&DW contributes 30–40% of the total urban waste [2], and the newly produced C&DW will reach 300 million tons per year [3]. If C&DW is not treated and used appropriately, it will cause serious effects on society, the environment, Remote Sens.

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