X-Git-Url: http://git.euphorik.ch/?p=master-thesis.git;a=blobdiff_plain;f=Parasitemia%2FParasitemia%2FKMedians.fs;h=9b5d50f057b743cbceb2a64909dc98222e8f0209;hp=82e09cb25e6192286fc8ad5609c84e46458cae8e;hb=b070295cf67b2025164a34b6594e84f0d771cdc9;hpb=e76da913cd58078ad2479357b2430ed62a6e0777 diff --git a/Parasitemia/Parasitemia/KMedians.fs b/Parasitemia/Parasitemia/KMedians.fs index 82e09cb..9b5d50f 100644 --- a/Parasitemia/Parasitemia/KMedians.fs +++ b/Parasitemia/Parasitemia/KMedians.fs @@ -10,7 +10,7 @@ type Result = { fg: Image median_bg: float median_fg: float - d_fg: Image } // Distances to median_fg. + d_fg: Image } // Euclidean distances of the foreground to median_fg. let kmedians (img: Image) (fgFactor: float) : Result = let nbIteration = 3 @@ -25,24 +25,26 @@ let kmedians (img: Image) (fgFactor: float) : Result = let mutable median_bg = (!max).[0] - ((!max).[0] - (!min).[0]) / 4.0 let mutable median_fg = (!min).[0] + ((!max).[0] - (!min).[0]) / 4.0 - let mutable d_bg = new Image(img.Size) + use mutable d_bg = new Image(img.Size) let mutable d_fg = new Image(img.Size) let mutable fg = new Image(img.Size) - for i in 1..nbIteration do + for i in 1 .. nbIteration do CvInvoke.Pow(img - median_bg, 2.0, d_bg) CvInvoke.Pow(img - median_fg, 2.0, d_fg) - fg <- (d_fg * fgFactor).Cmp(d_bg, CvEnum.CmpType.LessThan) + CvInvoke.Compare(d_fg, d_bg, fg, CvEnum.CmpType.LessThan) - median_fg <- MathNet.Numerics.Statistics.Statistics.Median(seq { - for i in 0 .. h - 1 do - for j in 0 .. w - 1 do - if fg.Data.[i, j, 0] > 0uy then yield img.Data.[i, j, 0] |> float }) + let bg_values = List() + let fg_values = List() - median_bg <- MathNet.Numerics.Statistics.Statistics.Median(seq { - for i in 0 .. h - 1 do - for j in 0 .. w - 1 do - if fg.Data.[i, j, 0] = 0uy then yield img.Data.[i, j, 0] |> float }) + for i in 0 .. h - 1 do + for j in 0 .. w - 1 do + if fg.Data.[i, j, 0] > 0uy + then fg_values.Add(float img.Data.[i, j, 0]) + else bg_values.Add(float img.Data.[i, j, 0]) + + median_bg <- MathNet.Numerics.Statistics.Statistics.Median(bg_values) + median_fg <- MathNet.Numerics.Statistics.Statistics.Median(fg_values) CvInvoke.Sqrt(d_fg, d_fg)