[][src]Struct color_quant::NeuQuant

pub struct NeuQuant { /* fields omitted */ }

Implementations

impl NeuQuant[src]

pub fn new(samplefac: i32, colors: usize, pixels: &[u8]) -> Self[src]

Creates a new neuronal network and trains it with the supplied data.

Pixels are assumed to be in RGBA format. colors should be $>=64$. samplefac determines the faction of the sample that will be used to train the network. Its value must be in the range $[1, 30]$. A value of $1$ thus produces the best result but is also slowest. $10$ is a good compromise between speed and quality.

pub fn init(&mut self, pixels: &[u8])[src]

Initializes the neuronal network and trains it with the supplied data.

This method gets called by Self::new.

pub fn map_pixel(&self, pixel: &mut [u8])[src]

Maps the rgba-pixel in-place to the best-matching color in the color map.

pub fn index_of(&self, pixel: &[u8]) -> usize[src]

Finds the best-matching index in the color map.

pixel is assumed to be in RGBA format.

pub fn lookup(&self, idx: usize) -> Option<[u8; 4]>[src]

Lookup pixel values for color at idx in the colormap.

pub fn color_map_rgba(&self) -> Vec<u8>[src]

Returns the RGBA color map calculated from the sample.

pub fn color_map_rgb(&self) -> Vec<u8>[src]

Returns the RGBA color map calculated from the sample.

Auto Trait Implementations

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