HALCON Reference Manual 10.0.2
Name
binocular_distanceT_binocular_distancebinocular_distanceBinocularDistanceBinocularDistance — Compute the distance values for a rectified stereo image pair using correlation
techniques.
binocular_distance(Image1, Image2 : Distance, Score : CamParamRect1, CamParamRect2, RelPoseRect, Method, MaskWidth, MaskHeight, TextureThresh, MinDisparity, MaxDisparity, NumLevels, ScoreThresh, Filter, SubDistance : )
Herror T_binocular_distance(const Hobject Image1, const Hobject Image2, Hobject* Distance, Hobject* Score, const Htuple CamParamRect1, const Htuple CamParamRect2, const Htuple RelPoseRect, const Htuple Method, const Htuple MaskWidth, const Htuple MaskHeight, const Htuple TextureThresh, const Htuple MinDisparity, const Htuple MaxDisparity, const Htuple NumLevels, const Htuple ScoreThresh, const Htuple Filter, const Htuple SubDistance)
Herror binocular_distance(Hobject Image1, Hobject Image2, Hobject* Distance, Hobject* Score, const HTuple& CamParamRect1, const HTuple& CamParamRect2, const HTuple& RelPoseRect, const HTuple& Method, const HTuple& MaskWidth, const HTuple& MaskHeight, const HTuple& TextureThresh, const HTuple& MinDisparity, const HTuple& MaxDisparity, const HTuple& NumLevels, const HTuple& ScoreThresh, const HTuple& Filter, const HTuple& SubDistance)
HImage HImage::BinocularDistance(const HImage& Image2, HImage* Score, const HTuple& CamParamRect1, const HTuple& CamParamRect2, const HTuple& RelPoseRect, const HTuple& Method, const HTuple& MaskWidth, const HTuple& MaskHeight, const HTuple& TextureThresh, const HTuple& MinDisparity, const HTuple& MaxDisparity, const HTuple& NumLevels, const HTuple& ScoreThresh, const HTuple& Filter, const HTuple& SubDistance) const
void HOperatorSetX.BinocularDistance(
[in] IHUntypedObjectX* Image1, [in] IHUntypedObjectX* Image2, [out] IHUntypedObjectX** Distance, [out] IHUntypedObjectX** Score, [in] VARIANT CamParamRect1, [in] VARIANT CamParamRect2, [in] VARIANT RelPoseRect, [in] VARIANT Method, [in] VARIANT MaskWidth, [in] VARIANT MaskHeight, [in] VARIANT TextureThresh, [in] VARIANT MinDisparity, [in] VARIANT MaxDisparity, [in] VARIANT NumLevels, [in] VARIANT ScoreThresh, [in] VARIANT Filter, [in] VARIANT SubDistance)
IHImageX* HPoseX.BinocularDistance(
[in] IHImageX* Image1, [in] IHImageX* Image2, [out] IHImageX** Score, [in] VARIANT CamParamRect1, [in] VARIANT CamParamRect2, [in] VARIANT RelPoseRect, [in] BSTR Method, [in] Hlong MaskWidth, [in] Hlong MaskHeight, [in] VARIANT TextureThresh, [in] Hlong MinDisparity, [in] Hlong MaxDisparity, [in] Hlong NumLevels, [in] VARIANT ScoreThresh, [in] VARIANT Filter, [in] VARIANT SubDistance)
IHImageX* HImageX.BinocularDistance(
[in] IHImageX* Image2, [out] IHImageX** Score, [in] VARIANT CamParamRect1, [in] VARIANT CamParamRect2, [in] VARIANT RelPoseRect, [in] BSTR Method, [in] Hlong MaskWidth, [in] Hlong MaskHeight, [in] VARIANT TextureThresh, [in] Hlong MinDisparity, [in] Hlong MaxDisparity, [in] Hlong NumLevels, [in] VARIANT ScoreThresh, [in] VARIANT Filter, [in] VARIANT SubDistance)
static void HOperatorSet.BinocularDistance(HObject image1, HObject image2, out HObject distance, out HObject score, HTuple camParamRect1, HTuple camParamRect2, HTuple relPoseRect, HTuple method, HTuple maskWidth, HTuple maskHeight, HTuple textureThresh, HTuple minDisparity, HTuple maxDisparity, HTuple numLevels, HTuple scoreThresh, HTuple filter, HTuple subDistance)
HImage HPose.BinocularDistance(HImage image1, HImage image2, out HImage score, HTuple camParamRect1, HTuple camParamRect2, string method, int maskWidth, int maskHeight, HTuple textureThresh, int minDisparity, int maxDisparity, int numLevels, HTuple scoreThresh, HTuple filter, HTuple subDistance)
HImage HPose.BinocularDistance(HImage image1, HImage image2, out HImage score, HTuple camParamRect1, HTuple camParamRect2, string method, int maskWidth, int maskHeight, double textureThresh, int minDisparity, int maxDisparity, int numLevels, double scoreThresh, string filter, string subDistance)
HImage HImage.BinocularDistance(HImage image2, out HImage score, HTuple camParamRect1, HTuple camParamRect2, HPose relPoseRect, string method, int maskWidth, int maskHeight, HTuple textureThresh, int minDisparity, int maxDisparity, int numLevels, HTuple scoreThresh, HTuple filter, HTuple subDistance)
HImage HImage.BinocularDistance(HImage image2, out HImage score, HTuple camParamRect1, HTuple camParamRect2, HPose relPoseRect, string method, int maskWidth, int maskHeight, double textureThresh, int minDisparity, int maxDisparity, int numLevels, double scoreThresh, string filter, string subDistance)
binocular_distancebinocular_distancebinocular_distanceBinocularDistanceBinocularDistance computes pixel-wise correspondences
between two images of a rectified stereo rig using correlation
techniques. Different from binocular_disparitybinocular_disparitybinocular_disparityBinocularDisparityBinocularDisparity this operator
transforms these pixel correlations into distances of the
corresponding 3D world points to the stereo camera system.
The algorithm requires a reference image Image1Image1Image1Image1image1 and a search
image Image2Image2Image2Image2image2 which must be rectified, i.e.,
corresponding epipolar lines are parallel and lie on identical image
rows ( r1=r2 ). In case this assumption is
violated the images can be rectified by using the operators
calibrate_camerascalibrate_camerascalibrate_camerasCalibrateCamerasCalibrateCameras,
gen_binocular_rectification_mapgen_binocular_rectification_mapgen_binocular_rectification_mapGenBinocularRectificationMapGenBinocularRectificationMap and
map_imagemap_imagemap_imageMapImageMapImage. Hence, given a pixel in the reference image
Image1Image1Image1Image1image1 the homologous pixel in Image2Image2Image2Image2image2 is selected
by searching along the corresponding row in Image2Image2Image2Image2image2 and
matching a local neighborhood within a rectangular window of size
MaskWidthMaskWidthMaskWidthMaskWidthmaskWidth and MaskHeightMaskHeightMaskHeightMaskHeightmaskHeight. For each defined
reference pixel the pixel correspondences are transformed into
distances of the world points defined by the intersection of the
lines of sight of a corresponding pixel pair to the z=0
plane of the rectified stereo system. These distances are returned
in the single channel image DistanceDistanceDistanceDistancedistance. For this
transformation the rectified internal camera parameters
CamParamRect1CamParamRect1CamParamRect1CamParamRect1camParamRect1 of the projective camera 1 and CamParamRect2CamParamRect2CamParamRect2CamParamRect2camParamRect2
of the projective camera 2, and the external parameters
RelPoseRectRelPoseRectRelPoseRectRelPoseRectrelPoseRect have to
be defined. Latter characterizes the relative pose of both cameras to each
other and specifies a point transformation from the rectified camera
system 2 to the rectified camera system 1. These parameters can
be obtained from the operator calibrate_camerascalibrate_camerascalibrate_camerasCalibrateCamerasCalibrateCameras and
gen_binocular_rectification_mapgen_binocular_rectification_mapgen_binocular_rectification_mapGenBinocularRectificationMapGenBinocularRectificationMap. After all, a quality
measure for each distance value is returned in ScoreScoreScoreScorescore,
containing the best result of the matching function
S of a reference pixel. For the matching, the gray values of the
original unprocessed images are used.
The used matching function is defined by the parameter MethodMethodMethodMethodmethod
allocating three different kinds of correlation:
-
'sad'"sad""sad""sad""sad": Summed Absolute Differences
S(r1,c1,d) := SUM(|g1(r1',c1')-g2(r1',c1'+d)|), 0=<=S<=255,
-
'ssd'"ssd""ssd""ssd""ssd": Summed Squared Differences
S(r1,c1,d) := SUM((g1(r1',c1')-g2(r1',c1'+d))²), 0<=S<=65025,
-
'nnc'"nnc""nnc""nnc""nnc": Normalized Cross Correlation
S(r1,c1,d) :=
SUM(g1(r1',c1')-gm1(r1,c1))*(g2(r1',c1'+d)-gm2(r1,c1+d)))/
SQRT(SUM((g1(r1',c1')-gm1(r1,c1))²)*
SUM((g2(r1',c1+d)-gm2(r1,c1+d))²)),
-1.0<=S<=1.0,
with
r1, c1, r2, c2: row and column coordinates of the corresponding pixels of
the two input images,
g1, g2: gray values of the unprocessed input images,
N=(2m+1)(2n+1): size of correlation window
SUM(x): mean value within the correlation window of width 2m+1 and
height 2n+1.
Note that the methods 'sad'"sad""sad""sad""sad" and 'ssd'"ssd""ssd""ssd""ssd" compare the gray
values of the pixels within a mask window directly, whereas 'ncc'"ncc""ncc""ncc""ncc"
compensates for the mean gray value and its variance within the mask
window. Therefore, if the two images differ in brightness and contrast, this
method should be preferred. For images with similar brightness and contrast
'sad'"sad""sad""sad""sad" and 'ssd'"ssd""ssd""ssd""ssd" are to be preferred as they are faster
because of less complex internal computations.
It should be noted that the quality of correlation for rising S is
falling in methods 'sad'"sad""sad""sad""sad" and 'ssd'"ssd""ssd""ssd""ssd" (the best
quality value is 0) but rising in method 'ncc'"ncc""ncc""ncc""ncc" (the best
quality value is 1.0).
The size of the correlation window has to be odd numbered and is
passed in MaskWidthMaskWidthMaskWidthMaskWidthmaskWidth and MaskHeightMaskHeightMaskHeightMaskHeightmaskHeight. The search
space is confined by the minimum and maximum disparity value
MinDisparityMinDisparityMinDisparityMinDisparityminDisparity and MaxDisparityMaxDisparityMaxDisparityMaxDisparitymaxDisparity. Due to pixel values
not defined beyond the image border the resulting domain of
DistanceDistanceDistanceDistancedistance and ScoreScoreScoreScorescore is generally not set along the
image border within a margin of height MaskHeightMaskHeightMaskHeightMaskHeightmaskHeight/2 at the
top and bottom border and of width MaskWidthMaskWidthMaskWidthMaskWidthmaskWidth/2 at the left
and right border. For the same reason, the maximum disparity range
is reduced at the left and right image border.
Since matching turns out to be highly unreliable when dealing with
poorly textured areas, the minimum variance within the
correlation window can be defined in TextureThreshTextureThreshTextureThreshTextureThreshtextureThresh. This
threshold is applied on both input images Image1Image1Image1Image1image1 and
Image2Image2Image2Image2image2. In addition, ScoreThreshScoreThreshScoreThreshScoreThreshscoreThresh guarantees the
matching quality and defines the maximum
('sad'"sad""sad""sad""sad",'ssd'"ssd""ssd""ssd""ssd") or, respectively, minimum
('ncc'"ncc""ncc""ncc""ncc") score value of the correlation
function. Setting FilterFilterFilterFilterfilter to 'left_right_check'"left_right_check""left_right_check""left_right_check""left_right_check",
moreover, increases the robustness of the returned matches, as the
result relies on a concurrent direct and reverse match, whereas
'none'"none""none""none""none" switches it off.
The number of pyramid levels used to improve the time response of
binocular_distancebinocular_distancebinocular_distanceBinocularDistanceBinocularDistance is determined by
NumLevelsNumLevelsNumLevelsNumLevelsnumLevels. Following a coarse-to-fine scheme disparity
images of higher levels are computed and segmentated into
rectangular subimages to reduce the disparity range on the next
lower pyramid level. TextureThreshTextureThreshTextureThreshTextureThreshtextureThresh and ScoreThreshScoreThreshScoreThreshScoreThreshscoreThresh
are applied on every level and the returned domain of the
DistanceDistanceDistanceDistancedistance and ScoreScoreScoreScorescore images arises from the
intersection of the resulting domains of every single
level. Generally, pyramid structures are the more advantageous the
more the distance image can be segmented into regions of homogeneous
distance values and the bigger the disparity range must be
specified. As a drawback, coarse pyramid levels might loose
important texture information which can result in deficient distance
values.
Finally, the value 'interpolation'"interpolation""interpolation""interpolation""interpolation" for parameter
SubDistanceSubDistanceSubDistanceSubDistancesubDistance increases the refinement and accuracy of the
distance values. It is switched off by setting the parameter to
'none'"none""none""none""none".
- Multithreading type: reentrant (runs in parallel with non-exclusive operators).
- Multithreading scope: global (may be called from any thread).
- Automatically parallelized on domain level.
Rectified image of camera 1.
Rectified image of camera 2.
Evaluation of a distance value.
Internal camera parameters of the rectified
camera 1.
Number of elements: (CamParamRect1 == 8) || (CamParamRect1 == 12)
Internal camera parameters of the rectified
camera 2.
Number of elements: (CamParamRect2 == 8) || (CamParamRect2 == 12)
Point transformation from rectified camera 2 to
rectified camera 1.
Number of elements: 7
Matching function.
Default value:
'ncc'
"ncc"
"ncc"
"ncc"
"ncc"
List of values: 'sad'"sad""sad""sad""sad", 'ssd'"ssd""ssd""ssd""ssd", 'ncc'"ncc""ncc""ncc""ncc"
Width of the correlation window.
Default value: 11
Suggested values: 5, 7, 9, 11, 21
Restriction: (3 <= MaskWidth) && odd(MaskWidth)
Height of the correlation window.
Default value: 11
Suggested values: 5, 7, 9, 11, 21
Restriction: (3 <= MaskHeight) && odd(MaskHeight)
Variance threshold of textured image regions.
Default value: 0.0
Suggested values: 0.0, 2.0, 5.0, 10.0
Restriction: 0.0 <= TextureThresh
Minimum of the expected disparities.
Default value: 0
Typical range of values: -32768
≤
MinDisparity
MinDisparity
MinDisparity
MinDisparity
minDisparity
≤
32767
Maximum of the expected disparities.
Default value: 30
Typical range of values: -32768
≤
MaxDisparity
MaxDisparity
MaxDisparity
MaxDisparity
maxDisparity
≤
32767
Number of pyramid levels.
Default value: 1
List of values: 1, 2, 3, 4
Restriction: 1 <= NumLevels
Threshold of the correlation function.
Default value: 0.0
List of values: 0.0, 2.0, 5.0, 10.0
Downstream filters.
Default value:
'none'
"none"
"none"
"none"
"none"
List of values: 'none'"none""none""none""none", 'left_right_check'"left_right_check""left_right_check""left_right_check""left_right_check"
Distance interpolation.
Default value:
'none'
"none"
"none"
"none"
"none"
List of values: 'none'"none""none""none""none", 'interpolation'"interpolation""interpolation""interpolation""interpolation"
* read the internal and external stereo parameters
read_cam_par ('cam_left.dat', CamParam1)
read_cam_par ('cam_right.dat', CamParam2)
read_pose ('relpose.dat', RelPose)
* compute the mapping for rectified images
gen_binocular_rectification_map (Map1, Map2, CamParam1, CamParam2, \
RelPose, 1, 'geometric', 'bilinear', \
CamParamRect1, CamParamRect2, \
Cam1PoseRect1, Cam2PoseRect2, RelPoseRect)
* compute the distance values in online images
while (1)
grab_image_async (Image1, AcqHandle1, -1)
map_image (Image1, Map1, ImageMapped1)
grab_image_async (Image2, AcqHandle2, -1)
map_image (Image2, Map2, ImageMapped2)
binocular_distance (ImageMapped1, ImageMapped2, Distance, Score, \
CamParamRect1, CamParam2, RelPoseRect, 'sad', \
11, 11, 20, -40, 20, 2, 25, \
'left_right_check', 'interpolation')
endwhile
* read the internal and external stereo parameters
read_cam_par ('cam_left.dat', CamParam1)
read_cam_par ('cam_right.dat', CamParam2)
read_pose ('relpose.dat', RelPose)
* compute the mapping for rectified images
gen_binocular_rectification_map (Map1, Map2, CamParam1, CamParam2, \
RelPose, 1, 'geometric', 'bilinear', \
CamParamRect1, CamParamRect2, \
Cam1PoseRect1, Cam2PoseRect2, RelPoseRect)
* compute the distance values in online images
while (1)
grab_image_async (Image1, AcqHandle1, -1)
map_image (Image1, Map1, ImageMapped1)
grab_image_async (Image2, AcqHandle2, -1)
map_image (Image2, Map2, ImageMapped2)
binocular_distance (ImageMapped1, ImageMapped2, Distance, Score, \
CamParamRect1, CamParam2, RelPoseRect, 'sad', \
11, 11, 20, -40, 20, 2, 25, \
'left_right_check', 'interpolation')
endwhile
// read the internal and external stereo parameters
read_cam_par("cam_left.dat",CamParam1);
read_cam_par("cam_right.dat",CamParam2);
read_pose("relpose.dat",RelPose);
// compute the mapping for rectified images
gen_binocular_rectification_map(&Map1,&Map2,CamParam1,CamParam2,RelPose,1,
"geometric","bilinear",&CamParamRect1,
&CamParamRect2,&CamPoseRect1,&CamPoseRect2,
&RelPoseRect);
// compute the distance values in online images
while (1)
{
grab_image_async(&Image1,AcqHandle1,-1);
map_image(Image1,Map1,&ImageMapped1);
grab_image_async(&Image2,AcqHandle2,-1);
map_image(Image2,Map2,&ImageMapped2);
binocular_distance(ImageMapped1,ImageMapped2,&Distance,&Score,
CamParamRect1,CamParamRect2,RelPose,"sad",11,11,
20,-40,20,2,25,"left_right_check","interpolation");
}
* read the internal and external stereo parameters
read_cam_par ('cam_left.dat', CamParam1)
read_cam_par ('cam_right.dat', CamParam2)
read_pose ('relpose.dat', RelPose)
* compute the mapping for rectified images
gen_binocular_rectification_map (Map1, Map2, CamParam1, CamParam2, \
RelPose, 1, 'geometric', 'bilinear', \
CamParamRect1, CamParamRect2, \
Cam1PoseRect1, Cam2PoseRect2, RelPoseRect)
* compute the distance values in online images
while (1)
grab_image_async (Image1, AcqHandle1, -1)
map_image (Image1, Map1, ImageMapped1)
grab_image_async (Image2, AcqHandle2, -1)
map_image (Image2, Map2, ImageMapped2)
binocular_distance (ImageMapped1, ImageMapped2, Distance, Score, \
CamParamRect1, CamParam2, RelPoseRect, 'sad', \
11, 11, 20, -40, 20, 2, 25, \
'left_right_check', 'interpolation')
endwhile
* read the internal and external stereo parameters
read_cam_par ('cam_left.dat', CamParam1)
read_cam_par ('cam_right.dat', CamParam2)
read_pose ('relpose.dat', RelPose)
* compute the mapping for rectified images
gen_binocular_rectification_map (Map1, Map2, CamParam1, CamParam2, \
RelPose, 1, 'geometric', 'bilinear', \
CamParamRect1, CamParamRect2, \
Cam1PoseRect1, Cam2PoseRect2, RelPoseRect)
* compute the distance values in online images
while (1)
grab_image_async (Image1, AcqHandle1, -1)
map_image (Image1, Map1, ImageMapped1)
grab_image_async (Image2, AcqHandle2, -1)
map_image (Image2, Map2, ImageMapped2)
binocular_distance (ImageMapped1, ImageMapped2, Distance, Score, \
CamParamRect1, CamParam2, RelPoseRect, 'sad', \
11, 11, 20, -40, 20, 2, 25, \
'left_right_check', 'interpolation')
endwhile
binocular_disparitybinocular_disparitybinocular_disparityBinocularDisparityBinocularDisparity returns 2 (H_MSG_TRUE) if all parameter values
are correct. If necessary, an exception is raised.
map_imagemap_imagemap_imageMapImageMapImage
thresholdthresholdthresholdThresholdThreshold
binocular_distance_mgbinocular_distance_mgbinocular_distance_mgBinocularDistanceMgBinocularDistanceMg,
binocular_disparitybinocular_disparitybinocular_disparityBinocularDisparityBinocularDisparity,
binocular_disparity_mgbinocular_disparity_mgbinocular_disparity_mgBinocularDisparityMgBinocularDisparityMg
map_imagemap_imagemap_imageMapImageMapImage,
gen_binocular_rectification_mapgen_binocular_rectification_mapgen_binocular_rectification_mapGenBinocularRectificationMapGenBinocularRectificationMap,
binocular_calibrationbinocular_calibrationbinocular_calibrationBinocularCalibrationBinocularCalibration,
distance_to_disparitydistance_to_disparitydistance_to_disparityDistanceToDisparityDistanceToDisparity,
disparity_to_distancedisparity_to_distancedisparity_to_distanceDisparityToDistanceDisparityToDistance
3D Metrology
| HALCON Reference Manual 10.0.2 |
Copyright © 1996-2011 MVTec Software GmbH |