//
// This file is auto-generated. Please don't modify it!
//
package org.opencv.imgproc;
import java.lang.String;
import java.util.ArrayList;
import java.util.List;
import org.opencv.core.Mat;
import org.opencv.core.MatOfFloat;
import org.opencv.core.MatOfInt;
import org.opencv.core.MatOfInt4;
import org.opencv.core.MatOfPoint;
import org.opencv.core.MatOfPoint2f;
import org.opencv.core.Point;
import org.opencv.core.Rect;
import org.opencv.core.RotatedRect;
import org.opencv.core.Scalar;
import org.opencv.core.Size;
import org.opencv.core.TermCriteria;
import org.opencv.utils.Converters;
public class Imgproc {
private static final int
IPL_BORDER_CONSTANT = 0,
IPL_BORDER_REPLICATE = 1,
IPL_BORDER_REFLECT = 2,
IPL_BORDER_WRAP = 3,
IPL_BORDER_REFLECT_101 = 4,
IPL_BORDER_TRANSPARENT = 5,
CV_INTER_NN = 0,
CV_INTER_LINEAR = 1,
CV_INTER_CUBIC = 2,
CV_INTER_AREA = 3,
CV_INTER_LANCZOS4 = 4,
CV_MOP_ERODE = 0,
CV_MOP_DILATE = 1,
CV_MOP_OPEN = 2,
CV_MOP_CLOSE = 3,
CV_MOP_GRADIENT = 4,
CV_MOP_TOPHAT = 5,
CV_MOP_BLACKHAT = 6,
CV_RETR_EXTERNAL = 0,
CV_RETR_LIST = 1,
CV_RETR_CCOMP = 2,
CV_RETR_TREE = 3,
CV_RETR_FLOODFILL = 4,
CV_CHAIN_APPROX_NONE = 1,
CV_CHAIN_APPROX_SIMPLE = 2,
CV_CHAIN_APPROX_TC89_L1 = 3,
CV_CHAIN_APPROX_TC89_KCOS = 4,
CV_THRESH_BINARY = 0,
CV_THRESH_BINARY_INV = 1,
CV_THRESH_TRUNC = 2,
CV_THRESH_TOZERO = 3,
CV_THRESH_TOZERO_INV = 4,
CV_THRESH_MASK = 7,
CV_THRESH_OTSU = 8,
CV_THRESH_TRIANGLE = 16;
public static final int
LINE_AA = 16,
LINE_8 = 8,
LINE_4 = 4,
CV_BLUR_NO_SCALE = 0,
CV_BLUR = 1,
CV_GAUSSIAN = 2,
CV_MEDIAN = 3,
CV_BILATERAL = 4,
CV_GAUSSIAN_5x5 = 7,
CV_SCHARR = -1,
CV_MAX_SOBEL_KSIZE = 7,
CV_RGBA2mRGBA = 125,
CV_mRGBA2RGBA = 126,
CV_WARP_FILL_OUTLIERS = 8,
CV_WARP_INVERSE_MAP = 16,
CV_SHAPE_RECT = 0,
CV_SHAPE_CROSS = 1,
CV_SHAPE_ELLIPSE = 2,
CV_SHAPE_CUSTOM = 100,
CV_CHAIN_CODE = 0,
CV_LINK_RUNS = 5,
CV_POLY_APPROX_DP = 0,
CV_CONTOURS_MATCH_I1 = 1,
CV_CONTOURS_MATCH_I2 = 2,
CV_CONTOURS_MATCH_I3 = 3,
CV_CLOCKWISE = 1,
CV_COUNTER_CLOCKWISE = 2,
CV_COMP_CORREL = 0,
CV_COMP_CHISQR = 1,
CV_COMP_INTERSECT = 2,
CV_COMP_BHATTACHARYYA = 3,
CV_COMP_HELLINGER = CV_COMP_BHATTACHARYYA,
CV_COMP_CHISQR_ALT = 4,
CV_COMP_KL_DIV = 5,
CV_DIST_MASK_3 = 3,
CV_DIST_MASK_5 = 5,
CV_DIST_MASK_PRECISE = 0,
CV_DIST_LABEL_CCOMP = 0,
CV_DIST_LABEL_PIXEL = 1,
CV_DIST_USER = -1,
CV_DIST_L1 = 1,
CV_DIST_L2 = 2,
CV_DIST_C = 3,
CV_DIST_L12 = 4,
CV_DIST_FAIR = 5,
CV_DIST_WELSCH = 6,
CV_DIST_HUBER = 7,
CV_CANNY_L2_GRADIENT = (1 << 31),
CV_HOUGH_STANDARD = 0,
CV_HOUGH_PROBABILISTIC = 1,
CV_HOUGH_MULTI_SCALE = 2,
CV_HOUGH_GRADIENT = 3,
MORPH_ERODE = 0,
MORPH_DILATE = 1,
MORPH_OPEN = 2,
MORPH_CLOSE = 3,
MORPH_GRADIENT = 4,
MORPH_TOPHAT = 5,
MORPH_BLACKHAT = 6,
MORPH_HITMISS = 7,
MORPH_RECT = 0,
MORPH_CROSS = 1,
MORPH_ELLIPSE = 2,
INTER_NEAREST = 0,
INTER_LINEAR = 1,
INTER_CUBIC = 2,
INTER_AREA = 3,
INTER_LANCZOS4 = 4,
INTER_MAX = 7,
WARP_FILL_OUTLIERS = 8,
WARP_INVERSE_MAP = 16,
INTER_BITS = 5,
INTER_BITS2 = INTER_BITS * 2,
INTER_TAB_SIZE = 1 << INTER_BITS,
INTER_TAB_SIZE2 = INTER_TAB_SIZE * INTER_TAB_SIZE,
DIST_USER = -1,
DIST_L1 = 1,
DIST_L2 = 2,
DIST_C = 3,
DIST_L12 = 4,
DIST_FAIR = 5,
DIST_WELSCH = 6,
DIST_HUBER = 7,
DIST_MASK_3 = 3,
DIST_MASK_5 = 5,
DIST_MASK_PRECISE = 0,
THRESH_BINARY = 0,
THRESH_BINARY_INV = 1,
THRESH_TRUNC = 2,
THRESH_TOZERO = 3,
THRESH_TOZERO_INV = 4,
THRESH_MASK = 7,
THRESH_OTSU = 8,
THRESH_TRIANGLE = 16,
ADAPTIVE_THRESH_MEAN_C = 0,
ADAPTIVE_THRESH_GAUSSIAN_C = 1,
PROJ_SPHERICAL_ORTHO = 0,
PROJ_SPHERICAL_EQRECT = 1,
GC_BGD = 0,
GC_FGD = 1,
GC_PR_BGD = 2,
GC_PR_FGD = 3,
GC_INIT_WITH_RECT = 0,
GC_INIT_WITH_MASK = 1,
GC_EVAL = 2,
DIST_LABEL_CCOMP = 0,
DIST_LABEL_PIXEL = 1,
FLOODFILL_FIXED_RANGE = 1 << 16,
FLOODFILL_MASK_ONLY = 1 << 17,
CC_STAT_LEFT = 0,
CC_STAT_TOP = 1,
CC_STAT_WIDTH = 2,
CC_STAT_HEIGHT = 3,
CC_STAT_AREA = 4,
CC_STAT_MAX = 5,
RETR_EXTERNAL = 0,
RETR_LIST = 1,
RETR_CCOMP = 2,
RETR_TREE = 3,
RETR_FLOODFILL = 4,
CHAIN_APPROX_NONE = 1,
CHAIN_APPROX_SIMPLE = 2,
CHAIN_APPROX_TC89_L1 = 3,
CHAIN_APPROX_TC89_KCOS = 4,
HOUGH_STANDARD = 0,
HOUGH_PROBABILISTIC = 1,
HOUGH_MULTI_SCALE = 2,
HOUGH_GRADIENT = 3,
LSD_REFINE_NONE = 0,
LSD_REFINE_STD = 1,
LSD_REFINE_ADV = 2,
HISTCMP_CORREL = 0,
HISTCMP_CHISQR = 1,
HISTCMP_INTERSECT = 2,
HISTCMP_BHATTACHARYYA = 3,
HISTCMP_HELLINGER = HISTCMP_BHATTACHARYYA,
HISTCMP_CHISQR_ALT = 4,
HISTCMP_KL_DIV = 5,
COLOR_BGR2BGRA = 0,
COLOR_RGB2RGBA = COLOR_BGR2BGRA,
COLOR_BGRA2BGR = 1,
COLOR_RGBA2RGB = COLOR_BGRA2BGR,
COLOR_BGR2RGBA = 2,
COLOR_RGB2BGRA = COLOR_BGR2RGBA,
COLOR_RGBA2BGR = 3,
COLOR_BGRA2RGB = COLOR_RGBA2BGR,
COLOR_BGR2RGB = 4,
COLOR_RGB2BGR = COLOR_BGR2RGB,
COLOR_BGRA2RGBA = 5,
COLOR_RGBA2BGRA = COLOR_BGRA2RGBA,
COLOR_BGR2GRAY = 6,
COLOR_RGB2GRAY = 7,
COLOR_GRAY2BGR = 8,
COLOR_GRAY2RGB = COLOR_GRAY2BGR,
COLOR_GRAY2BGRA = 9,
COLOR_GRAY2RGBA = COLOR_GRAY2BGRA,
COLOR_BGRA2GRAY = 10,
COLOR_RGBA2GRAY = 11,
COLOR_BGR2BGR565 = 12,
COLOR_RGB2BGR565 = 13,
COLOR_BGR5652BGR = 14,
COLOR_BGR5652RGB = 15,
COLOR_BGRA2BGR565 = 16,
COLOR_RGBA2BGR565 = 17,
COLOR_BGR5652BGRA = 18,
COLOR_BGR5652RGBA = 19,
COLOR_GRAY2BGR565 = 20,
COLOR_BGR5652GRAY = 21,
COLOR_BGR2BGR555 = 22,
COLOR_RGB2BGR555 = 23,
COLOR_BGR5552BGR = 24,
COLOR_BGR5552RGB = 25,
COLOR_BGRA2BGR555 = 26,
COLOR_RGBA2BGR555 = 27,
COLOR_BGR5552BGRA = 28,
COLOR_BGR5552RGBA = 29,
COLOR_GRAY2BGR555 = 30,
COLOR_BGR5552GRAY = 31,
COLOR_BGR2XYZ = 32,
COLOR_RGB2XYZ = 33,
COLOR_XYZ2BGR = 34,
COLOR_XYZ2RG
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android-opencv-SHARED-Java (219个子文件)
OpenCVEngineInterface.aidl 995B
gradlew.bat 2KB
fileSnapshots.bin 5.99MB
fileHashes.bin 319KB
taskArtifacts.bin 229KB
localClassSetAnalysis.bin 50KB
localClassSetAnalysis.bin 47KB
localClassSetAnalysis.bin 28KB
outputFileStates.bin 23KB
localClassSetAnalysis.bin 22KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localJarClasspathSnapshot.bin 19KB
localClassSetAnalysis.bin 18KB
localClassSetAnalysis.bin 18KB
localClassSetAnalysis.bin 18KB
com_lisc_android_opencv_lib_OpenCVHelper.cpp 1KB
com_lisc_android_opencv_lib_OpenCVHelper.o.d 11KB
com_lisc_android_opencv_lib_OpenCVHelper.o.d 11KB
.DS_Store 10KB
.DS_Store 10KB
.DS_Store 8KB
.DS_Store 8KB
.DS_Store 8KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.DS_Store 6KB
.gitignore 97B
.gitignore 7B
.gitignore 7B
build.gradle 2KB
build.gradle 667B
build.gradle 498B
settings.gradle 42B
gradlew 5KB
com_lisc_android_opencv_lib_OpenCVHelper.h 557B
app.iml 9KB
android-opencv-library.iml 9KB
ar.iml 933B
gradle-wrapper.jar 52KB
Imgproc.java 144KB
Calib3d.java 83KB
Core.java 78KB
Mat.java 33KB
Photo.java 29KB
Converters.java 24KB
HOGDescriptor.java 19KB
Videoio.java 19KB
CameraBridgeViewBase.java 18KB
AsyncServiceHelper.java 18KB
CameraGLRendererBase.java 16KB
Video.java 15KB
DescriptorMatcher.java 14KB
TrainData.java 14KB
JavaCameraView.java 13KB
Camera2Renderer.java 12KB
KalmanFilter.java 11KB
Subdiv2D.java 10KB
ANN_MLP.java 10KB
BackgroundSubtractorMOG2.java 10KB
CascadeClassifier.java 9KB
SVM.java 9KB
EM.java 8KB
Features2d.java 8KB
Moments.java 8KB
StereoBM.java 7KB
DTrees.java 7KB
FeatureDetector.java 7KB
LogisticRegression.java 7KB
CameraRenderer.java 7KB
Imgcodecs.java 6KB
BaseLoaderCallback.java 6KB
Utils.java 6KB
VideoCapture.java 6KB
BackgroundSubtractorKNN.java 6KB
StereoMatcher.java 6KB
StereoSGBM.java 6KB
AlignMTB.java 5KB
DescriptorExtractor.java 5KB
VideoWriter.java 5KB
KNearest.java 5KB
MergeMertens.java 4KB
CvType.java 4KB
CameraGLSurfaceView.java 4KB
RotatedRect.java 3KB
StatModel.java 3KB
RTrees.java 3KB
TonemapDurand.java 3KB
LineSegmentDetector.java 3KB
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