hctian713/MultiSpectral-RSImg-Classification
【武汉大学遥感学院】空间智能感知与服务课设 | 基于Softmax的多波段遥感影像分类
This helps remote sensing professionals classify the pollution levels in multi-spectral satellite or aerial imagery. You input a multi-band TIFF image with various spectral bands, and it outputs a classified image where each pixel is assigned one of four pollution categories. This is designed for environmental scientists, urban planners, or remote sensing analysts who need to quickly assess environmental conditions over large areas.
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Use this if you have multi-spectral imagery in TIFF format and need to segment or classify areas based on specific spectral signatures, especially for environmental monitoring.
Not ideal if your imagery has a very different number of bands, requires highly complex feature extraction, or you need to classify more than four distinct categories.
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Oct 24, 2022
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