Abstract

Based on the characteristics of remote sensing images of mine vegetation, this research studied the application of deep belief network model in mine vegetation identification. Through vegetation identification and classification, the ecological environment index of mining area was determined according to the analysis of vegetation and coverage. Deep learning algorithm is adopted to improve the depth study, the vegetation coverage in the analysis was studied. Parameters and parameter values were selected for identification by establishing the optimal experimental design. The experimental results were compared with remote sensing images to determine the accuracy of deep learning identification and the effectiveness of the algorithm. When the sample size is 2,000,000 pixels, through repeated tests and classification effect comparison, the optimal parameter setting suitable for mine vegetation identification is obtained. Parameter setting: the number of network layers is 3 layers; the number of hidden layer neurons is 60. The learning rate is 0.01 and the number of iterations is 2. The average recognition rate of vegetation coverage was 95.95%, outperforming some other models, and the accuracy rate of kappa coefficient was 0.95, which can accurately reflect the vegetation coverage. The clearer the satellite image is, the more accurate the recognition result is, and the accuracy is closer to 100%. The identification of vegetation coverage has important guiding significance for determining the area and area of ecological restoration.

Highlights

  • With the increasing intensity of mineral resources development, the longterm, poorly planned, and unreasonable development, mining has resulted in quite serious environmental problems

  • The experiments in this study evaluated the effect of vegetation identification by using these three standards

  • Experiments proved the feasibility of using deep learning in the application of remote sensing vegetation identification

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Summary

Introduction

With the increasing intensity of mineral resources development, the longterm, poorly planned, and unreasonable development, mining has resulted in quite serious environmental problems. It affects the living environment and economic development of regional residents, bringing about potential social problems [1]. Remote sensing technology is widely used in military research [4], land-use change monitoring [5], environmental monitoring [6], and geological geography [7]. The use of hyperspectral and multispectral remote sensing imagery to monitor the mine environment under different climates and mines types yielded fruitful results [8]. Charou and others monitored [9]

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