相邻列均衡算法(张兵,2006)
This commit is contained in:
10
cmd/proc.go
10
cmd/proc.go
@@ -15,7 +15,7 @@ import (
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var (
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params producer.Params
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saveStrip bool
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doRRC bool
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doLUTRRC bool
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doMomentMatching bool
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lutDir string
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)
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@@ -47,8 +47,8 @@ var procCmd = &cobra.Command{
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godal.RegisterAll()
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os.MkdirAll(params.OutputDir, 0755)
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if doRRC {
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reg.DoRRC(lutDir)
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if doLUTRRC {
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reg.DoRRCbyLUT(lutDir)
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}
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if doMomentMatching {
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@@ -102,8 +102,8 @@ func init() {
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procCmd.Flags().BoolVarP(¶ms.SubScenes, "sub-scenes", "", false, "process sub-scenes")
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procCmd.Flags().BoolVarP(&saveStrip, "save-strip", "", false, "save original and registered images as GDAL GTiff")
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procCmd.Flags().StringVarP(¶msXML, "params", "x", "", "params xml file path")
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procCmd.Flags().StringVarP(&lutDir, "lut", "l", "data/lut", "LUT directory")
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procCmd.Flags().BoolVarP(&doRRC, "rrc", "", false, "do RRC")
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procCmd.Flags().StringVarP(&lutDir, "lut-dir", "", "data/lut", "LUT directory")
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procCmd.Flags().BoolVarP(&doLUTRRC, "lut-rrc", "", false, "do RRC with LUT method")
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procCmd.Flags().BoolVarP(&doMomentMatching, "mm", "", false, "do moment matching")
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}
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@@ -8,7 +8,7 @@ import (
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"starwiz.cn/sjy01/image-proc/pkg/rrc"
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)
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func (r *Registrator) DoRRC(lutDir string) error {
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func (r *Registrator) DoRRCbyLUT(lutDir string) error {
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logrus.Printf("try to do RRC [%s]...", lutDir)
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lutPAN, err := rrc.LoadLUT(filepath.Join(lutDir, "B0.LUT"), 9344)
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if err != nil {
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@@ -7,8 +7,7 @@ import (
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"gocv.io/x/gocv"
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)
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// Destriping multisensor imagery with moment matching
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// Destriping multisensor imagery with moment matching [Gadallah, 2000]
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func DoMomentMatching(originalImg gocv.Mat) {
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probes := originalImg.Cols()
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log.Printf("do moment matching for %d probes", probes)
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@@ -54,3 +53,42 @@ func DoMomentMatching(originalImg gocv.Mat) {
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}
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}
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}
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// 相邻列均衡算法(张兵,2006)- 实测结果不如上面的矩匹配算法
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func DoMomentMatching2006(originalImg gocv.Mat) {
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probes := originalImg.Cols()
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log.Printf("do moment matching for %d probes", probes)
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// 第i个探元的像元均值和标准差
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means := make([]float64, probes)
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stds := make([]float64, probes)
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// 计算每个探元的均值和标准差
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for x := 0; x < originalImg.Cols(); x++ {
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var total int64
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n := originalImg.Rows()
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var dn uint16
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for y := 0; y < n; y++ {
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dn = uint16(originalImg.GetShortAt(y, x))
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total += int64(dn)
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}
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means[x] = float64(total) / float64(n)
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var a float64
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for y := 0; y < n; y++ {
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dn = uint16(originalImg.GetShortAt(y, x))
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a += math.Pow(float64(dn)-means[x], 2)
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}
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stds[x] = math.Sqrt(a / float64(n))
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}
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// 修正 DN_adjusted[i] = (DN[i] - means[i]) *sig/stds[i]+mu
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for x := 1; x < originalImg.Cols()-1; x++ {
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// 列参考值和列参考标准差
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mu := (means[x-1] + means[x+1]/2 + means[x]) / 2
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sig := (stds[x-1] + stds[x+1]/2 + stds[x]) / 2
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for y := 0; y < originalImg.Rows(); y++ {
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dn := uint16(originalImg.GetShortAt(y, x))
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dn_adjusted := uint16((float64(dn)-means[x])*sig/stds[x] + mu)
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originalImg.SetShortAt(y, x, int16(dn_adjusted))
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}
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}
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}
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