TY - EJOU AU - T1 - Color-Based Forest Cover Type Image Segmentation using K-Means Clustering Approach T2 - Journal of Forests PY - 2020 VL - 7 IS - 1 SN - 2409-3807 AB - In order to understand forest composition, classifying forest cover type can help research regarding forest resilience, carbon sequestration, and climate change concerns. The purposes of this study were to develop and implement some image processing functions based on the histogram of forest cover type color image, and to classify forest cover type using its color feature sets of image pixels. Color-based image segmentation that is based on the color feature of image pixels assumes that homogeneous colors in the image correspond to separate clusters and hence meaningful objects in the image. The Image Processing Toolbox of MATLAB R2019a was used to convert the original forest cover type image to the enhance contrast image, including histogram of enhance contrast image. Furthermore, It was also used to analyze color-based forest cover type image segmentation using the enhance contrast image for this study. Using K-Means clustering analysis, a three-cluster solution was developed, labeled as Hardwoods (Yellow Color) Cover Type, Hardwoods (Gray Color) Cover Type, and Loblolly Pines Cover Type. There was a significant difference among three different forest cover type clusters in terms of histograms and L*a*b* color space features visually. KW - Forest cover type KW - Color-based KW - Image segmentation KW - Histogram KW - K-means clustering KW - MATLAB. DO - 10.18488/journal.101.2020.71.18.31