Color Detection of RGB Images Using Python and OpenCv
DOI:
https://doi.org//10.32628/CSEIT217119Keywords:
Enchroma, RGB value, OpenCv, pandasAbstract
The main objective of this application is the methodology for identifying the shades of colors with an exact prediction with their names. A study says, a normal human can able to clearly identify nearly 1 million shades of colors. But in the case of human having “enchroma”, could be able to see only 1% (i.e.10,000 colors) from the normal humans. While painting pictures, a painter needs to identify the color patterns exactly or else the reality of image is not clear.
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