[Image-SIG] Reading 16bit image

Klamer Schutte Schutte@fel.tno.nl
Wed, 21 Aug 2002 23:07:13 +0200


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With regard to 16 bit TIFF support:

Please find attached 
- diffs for Imaging-1.1.3
- changes sources of Imaging-1.1.3

The changes sources are for when you don't have/know patch; in that
caes just replace the source files. Otherwise use patch; recompile
and re-install Imaging-1.1.3.

What is changed in the sources:
- ability to read 16 bit unsigned TIFF files using Image.open
- ability to use Image.show (by adding convert to 'L' mode (uint8))
- ability to use Image.getextrema and Image.point

Image.show, Image.getextrema and Image.point all work similar to
the 32 int cases; so something like:

import Image
im16 = Image.open('img.tif')
min,max = im16.getextrema()
scale = 255.0 / (max - min)
offset = - min * scale
im16c = im16.point(lambda i: i * scale + offset)
im16c.show()

will show a strechted image (sorry, typed from memory).

Other PIL functions are not (yet ?) converted for 16 int use.
Note that im16.convert('I') will give a 32 bit int image, which is
better supported in PIL; or use im16c.convert('L') and have an 8 bit 
image.

Feedback is appreciated!

Klamer Schutte 
Schutte@fel.tno.nl

Klamer Schutte wrote:

> Aureli Soria Frisch wrote:

> > I submitted a while ago a question related to the possibility of
> > opening TIF files with 16 bit depth that remained with no answer...
> >
> > It would be interesting to know how to work with 16 bit files in PIL
> > in general (it does not seem to be possible with the open source
> > version of PIL)...
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diff -cr Imaging-1.1.3/PIL/Image.py Imaging-1.1.3-KS/PIL/Image.py
*** Imaging-1.1.3/PIL/Image.py	Thu Mar 14 20:55:04 2002
--- Imaging-1.1.3-KS/PIL/Image.py	Wed Aug 21 22:09:57 2002
***************
*** 1,6 ****
  #
  # The Python Imaging Library.
! # $Id: //modules/pil/PIL/Image.py#17 $
  #
  # the Image class wrapper
  #
--- 1,6 ----
  #
  # The Python Imaging Library.
! # $Id: Image.py,v 1.2 2002/08/21 20:09:19 klamer Exp $
  #
  # the Image class wrapper
  #
***************
*** 145,150 ****
--- 145,151 ----
      # official modes
      "1": ("L", "L", ("1",)),
      "L": ("L", "L", ("L",)),
+     "I;16" : ("L", "I;16", ("I;16",)),
      "I": ("L", "I", ("I",)),
      "F": ("L", "F", ("F",)),
      "P": ("RGB", "L", ("P",)),
***************
*** 625,631 ****
      def point(self, lut, mode=None):
          "Map image through lookup table"
  
!         if self.mode in ("I", "F"):
              # floating point; lut must be a valid expression
              scale, offset = _getscaleoffset(lut)
              self.load()
--- 626,632 ----
      def point(self, lut, mode=None):
          "Map image through lookup table"
  
!         if self.mode in ("I", "I;16", "F"):
              # floating point; lut must be a valid expression
              scale, offset = _getscaleoffset(lut)
              self.load()
diff -cr Imaging-1.1.3/PIL/TiffImagePlugin.py Imaging-1.1.3-KS/PIL/TiffImagePlugin.py
*** Imaging-1.1.3/PIL/TiffImagePlugin.py	Sun Mar 10 17:57:39 2002
--- Imaging-1.1.3-KS/PIL/TiffImagePlugin.py	Wed Aug 21 22:12:37 2002
***************
*** 1,6 ****
  #
  # The Python Imaging Library.
! # $Id: //modules/pil/PIL/TiffImagePlugin.py#5 $
  #
  # TIFF file handling
  #
--- 1,6 ----
  #
  # The Python Imaging Library.
! # $Id: TiffImagePlugin.py,v 1.1 2002/08/21 20:11:01 klamer Exp $
  #
  # TIFF file handling
  #
***************
*** 106,112 ****
      (0, 1, (8,), ()): ("L", "L;I"),
      (1, 1, (1,), ()): ("1", "1"),
      (1, 1, (8,), ()): ("L", "L"),
!     (1, 2, (16,), ()): ("I;16", "I;16"),
      (1, 2, (32,), ()): ("I", "I;32S"),
      (1, 3, (32,), ()): ("F", "F;32F"),
      (2, 1, (8,8,8), ()): ("RGB", "RGB"),
--- 106,113 ----
      (0, 1, (8,), ()): ("L", "L;I"),
      (1, 1, (1,), ()): ("1", "1"),
      (1, 1, (8,), ()): ("L", "L"),
!     (1, 1, (16,), ()): ("I;16", "I;16"),
!     (1, 2, (16,), ()): ("I;16S", "I;16S"),
      (1, 2, (32,), ()): ("I", "I;32S"),
      (1, 3, (32,), ()): ("F", "F;32F"),
      (2, 1, (8,8,8), ()): ("RGB", "RGB"),
***************
*** 331,336 ****
--- 332,338 ----
                  elif tag in (X_RESOLUTION, Y_RESOLUTION):
                      # identify rational data fields
                      typ = 5
+                     continue
                  else:
                      typ = 3
                      for v in value:
***************
*** 568,574 ****
      "L": ("L", 1, 1, (8,), None),
      "P": ("P", 3, 1, (8,), None),
      "I": ("I;32S", 1, 2, (32,), None),
!     "I;16": ("I;16", 1, 2, (16,), None),
      "F": ("F;32F", 1, 3, (32,), None),
      "RGB": ("RGB", 2, 1, (8,8,8), None),
      "RGBX": ("RGBX", 2, 1, (8,8,8,8), 0),
--- 570,577 ----
      "L": ("L", 1, 1, (8,), None),
      "P": ("P", 3, 1, (8,), None),
      "I": ("I;32S", 1, 2, (32,), None),
!     "I;16": ("I;16", 1, 1, (16,), None),
!     "I;16S": ("I;16S", 1, 2, (16,), None),
      "F": ("F;32F", 1, 3, (32,), None),
      "RGB": ("RGB", 2, 1, (8,8,8), None),
      "RGBX": ("RGBX", 2, 1, (8,8,8,8), 0),
diff -cr Imaging-1.1.3/_imaging.c Imaging-1.1.3-KS/_imaging.c
*** Imaging-1.1.3/_imaging.c	Sun Mar 10 17:57:40 2002
--- Imaging-1.1.3-KS/_imaging.c	Wed Aug 21 22:13:16 2002
***************
*** 1,6 ****
  /*
   * The Python Imaging Library.
!  * $Id: //modules/pil/_imaging.c#11 $
   *
   * the imaging library bindings
   *
--- 1,6 ----
  /*
   * The Python Imaging Library.
!  * $Id: _imaging.c,v 1.1 2002/08/21 20:13:00 klamer Exp $
   *
   * the imaging library bindings
   *
***************
*** 1415,1420 ****
--- 1415,1421 ----
      union {
          UINT8 u[2];
          INT32 i[2];
+         UINT16 i16[2];
          FLOAT32 f[2];
      } extrema;
      int status;
***************
*** 1431,1436 ****
--- 1432,1440 ----
              return Py_BuildValue("ii", extrema.i[0], extrema.i[1]);
          case 2:
              return Py_BuildValue("dd", extrema.f[0], extrema.f[1]);
+ 	case 3:
+ 	    if (strcmp(self->image->mode, "I;16") == 0)
+ 		return Py_BuildValue("ii", extrema.i16[0], extrema.i16[1]);
          }
  
      Py_INCREF(Py_None);
diff -cr Imaging-1.1.3/libImaging/Convert.c Imaging-1.1.3-KS/libImaging/Convert.c
*** Imaging-1.1.3/libImaging/Convert.c	Sun Mar 10 17:57:40 2002
--- Imaging-1.1.3-KS/libImaging/Convert.c	Wed Aug 21 22:14:10 2002
***************
*** 1,6 ****
  /* 
   * The Python Imaging Library
!  * $Id: //modules/pil/libImaging/Convert.c#3 $
   * 
   * convert images
   *
--- 1,6 ----
  /* 
   * The Python Imaging Library
!  * $Id: Convert.c,v 1.1 2002/08/21 20:13:39 klamer Exp $
   * 
   * convert images
   *
***************
*** 408,413 ****
--- 408,423 ----
  }
  
  static void
+ l2i16(UINT8* out, const UINT8* in, int xsize)
+ {
+   int x;
+     for (x = 0; x < xsize; x++, in++) {
+ 	*out++ = *in;
+ 	*out++ = 0;
+     }
+ }
+ 
+ static void
  i2i16b(UINT8* out, const UINT8* in_, int xsize)
  {
      int x, v;
***************
*** 429,434 ****
--- 439,455 ----
  }
  
  static void
+ i162l(UINT8* out, const UINT8* in, int xsize)
+ {
+     int x;
+     for (x = 0; x < xsize; x++, in += 2)
+       if (in[1] != 0)
+ 	*out++ = 255;
+       else
+ 	*out++ = in[0];
+ }
+ 
+ static void
  i16b2i(UINT8* out_, const UINT8* in, int xsize)
  {
      int x;
***************
*** 510,515 ****
--- 531,539 ----
      { "I", "I;16B", i2i16b },
      { "I;16B", "I", i16b2i },
  
+     { "L", "I;16", l2i16 },
+     { "I;16", "L", i162l },
+ 
      { NULL }
  };
  
***************
*** 905,911 ****
--- 929,943 ----
  	}
  
      if (!convert)
+ #ifdef notdef
  	return (Imaging) ImagingError_ValueError("conversion not supported");
+ #else
+     {
+       static char buf[256];
+       sprintf(buf, "conversion from %s to %s not supported", imIn->mode, mode);
+       return (Imaging) ImagingError_ValueError(buf);
+     }
+ #endif
  
      imOut = ImagingNew2(mode, imOut, imIn);
      if (!imOut)
diff -cr Imaging-1.1.3/libImaging/GetBBox.c Imaging-1.1.3-KS/libImaging/GetBBox.c
*** Imaging-1.1.3/libImaging/GetBBox.c	Sun Mar 10 17:57:40 2002
--- Imaging-1.1.3-KS/libImaging/GetBBox.c	Wed Aug 21 22:14:59 2002
***************
*** 1,6 ****
  /* 
   * The Python Imaging Library
!  * $Id: //modules/pil/libImaging/GetBBox.c#2 $
   *
   * get bounding box for image
   *
--- 1,6 ----
  /* 
   * The Python Imaging Library
!  * $Id: GetBBox.c,v 1.1 2002/08/21 20:14:29 klamer Exp $
   *
   * get bounding box for image
   *
***************
*** 163,168 ****
--- 163,186 ----
          ((FLOAT32*) extrema)[0] = fmin;
          ((FLOAT32*) extrema)[1] = fmax;
          break;
+     case IMAGING_TYPE_SPECIAL:
+       if (strcmp(im->mode,"I;16") == 0)
+ 	{
+         imin = imax = ((UINT16*)im->image8[0])[0];
+         for (y = 0; y < im->ysize; y++) {
+             UINT16* in = (UINT16 *)im->image[y];
+             for (x = 0; x < im->xsize; x++) {
+                 if (imin > in[x])
+                     imin = in[x];
+                 else if (imax < in[x])
+                     imax = in[x];
+             }
+         }
+         ((UINT16*) extrema)[0] = (UINT16) imin;
+         ((UINT16*) extrema)[1] = (UINT16) imax;
+ 	  break;
+ 	}
+       /* FALL THROUGH */
      default:
          ImagingError_ModeError();
          return -1;
diff -cr Imaging-1.1.3/libImaging/Point.c Imaging-1.1.3-KS/libImaging/Point.c
*** Imaging-1.1.3/libImaging/Point.c	Sun Mar 10 17:57:40 2002
--- Imaging-1.1.3-KS/libImaging/Point.c	Wed Aug 21 22:15:51 2002
***************
*** 1,6 ****
  /*
   * The Python Imaging Library
!  * $Id: //modules/pil/libImaging/Point.c#2 $
   *
   * point (pixel) translation
   *
--- 1,6 ----
  /*
   * The Python Imaging Library
!  * $Id: Point.c,v 1.1 2002/08/21 20:15:22 klamer Exp $
   *
   * point (pixel) translation
   *
***************
*** 113,119 ****
      Imaging imOut;
      int x, y;
  
!     if (!imIn || strcmp(imIn->mode, "I") != 0 && strcmp(imIn->mode, "F") != 0)
  	return (Imaging) ImagingError_ModeError();
  
      imOut = ImagingNew(imIn->mode, imIn->xsize, imIn->ysize);
--- 113,121 ----
      Imaging imOut;
      int x, y;
  
!     if (!imIn || (strcmp(imIn->mode, "I") != 0) && 
! 	(strcmp(imIn->mode, "I;16") != 0) && 
! 	(strcmp(imIn->mode, "F") != 0))
  	return (Imaging) ImagingError_ModeError();
  
      imOut = ImagingNew(imIn->mode, imIn->xsize, imIn->ysize);
***************
*** 140,145 ****
--- 142,160 ----
                  out[x] = in[x] * scale + offset;
          }
          break;
+     case IMAGING_TYPE_SPECIAL:
+       if (strcmp(imIn->mode,"I;16") == 0)
+ 	{
+ 	  for (y = 0; y < imIn->ysize; y++) {
+             UINT16* in  = (UINT16 *)imIn->image[y];
+             UINT16* out = (UINT16 *)imOut->image[y];
+             /* FIXME: add clipping? */
+             for (x = 0; x < imIn->xsize; x++)
+ 	      out[x] = in[x] * scale + offset;
+ 	  }
+ 	  break;
+ 	}
+       /* FALL THROUGH */
      default:
          ImagingDelete(imOut);
          return (Imaging) ImagingError_ValueError("internal error");

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