X-Git-Url: http://git.euphorik.ch/?a=blobdiff_plain;f=Parasitemia%2FParasitemiaCore%2FImgTools%2FImgTools.fs;fp=Parasitemia%2FParasitemiaCore%2FImgTools%2FImgTools.fs;h=0510bc81de268ffeec6c1e3d3caf8989be2fc808;hb=3f8b0d281b3058faf23dbd0363de440bd04c6574;hp=0000000000000000000000000000000000000000;hpb=e3842630f4d36c5ea8c8a0c3d4762684e1c510f4;p=master-thesis.git diff --git a/Parasitemia/ParasitemiaCore/ImgTools/ImgTools.fs b/Parasitemia/ParasitemiaCore/ImgTools/ImgTools.fs new file mode 100644 index 0000000..0510bc8 --- /dev/null +++ b/Parasitemia/ParasitemiaCore/ImgTools/ImgTools.fs @@ -0,0 +1,49 @@ +module ParasitemiaCore.ImgTools + +open System +open System.Drawing + +open Emgu.CV +open Emgu.CV.Structure + +let normalize (img: Image) (upperLimit: float) : Image = + let min = ref [| 0.0 |] + let minLocation = ref <| [| Point() |] + let max = ref [| 0.0 |] + let maxLocation = ref <| [| Point() |] + img.MinMax(min, max, minLocation, maxLocation) + let normalized = (img - (!min).[0]) / ((!max).[0] - (!min).[0]) + if upperLimit = 1.0 + then normalized + else upperLimit * normalized + +let mergeChannels (img: Image) (rgbWeights: float * float * float) : Image = + match rgbWeights with + | 1., 0., 0. -> img.[2] + | 0., 1., 0. -> img.[1] + | 0., 0., 1. -> img.[0] + | redFactor, greenFactor, blueFactor -> + let result = new Image(img.Size) + CvInvoke.AddWeighted(result, 1., img.[2], redFactor, 0., result) + CvInvoke.AddWeighted(result, 1., img.[1], greenFactor, 0., result) + CvInvoke.AddWeighted(result, 1., img.[0], blueFactor, 0., result) + result + +let mergeChannelsWithProjection (img: Image) (v1r: float32, v1g: float32, v1b: float32) (v2r: float32, v2g: float32, v2b: float32) (upperLimit: float) : Image = + let vr, vg, vb = v2r - v1r, v2g - v1g, v2b - v1b + let vMagnitude = sqrt (vr ** 2.f + vg ** 2.f + vb ** 2.f) + let project (r: float32) (g: float32) (b: float32) = ((r - v1r) * vr + (g - v1g) * vg + (b - v1b) * vb) / vMagnitude + let result = new Image(img.Size) + // TODO: Essayer en bindant Data pour gagner du temps + for i in 0 .. img.Height - 1 do + for j in 0 .. img.Width - 1 do + result.Data.[i, j, 0] <- project img.Data.[i, j, 2] img.Data.[i, j, 1] img.Data.[i, j, 0] + normalize result upperLimit + +// Normalize image values between 0uy and 255uy. +let normalizeAndConvert (img: Image) : Image = + (normalize (img.Convert()) 255.).Convert() + +let gaussianFilter (img : Image<'TColor, 'TDepth>) (standardDeviation : float) : Image<'TColor, 'TDepth> = + let size = 2 * int (ceil (4.0 * standardDeviation)) + 1 + img.SmoothGaussian(size, size, standardDeviation, standardDeviation)