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Open Java Imaging Library.
package com.github.ojil.algorithm;
/*
* Gray8DetectHaarMultiScale.java
*
* Created on August 19, 2007, 7:33 PM
*
* To change this template, choose Tools | Template Manager
* and open the template in the editor.
*
* Copyright 2007 by Jon A. Webb
* This program is free software: you can redistribute it and/or modify
* it under the terms of the GNU Lesser General Public License as published by
* the Free Software Foundation, either version 3 of the License, or
* (at your option) any later version.
*
* This program is distributed in the hope that it will be useful,
* but WITHOUT ANY WARRANTY; without even the implied warranty of
* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
* GNU Lesser General Public License for more details.
*
* You should have received a copy of the Lesser GNU General Public License
* along with this program. If not, see .
*
*/
import java.io.IOException;
import java.io.InputStream;
import java.io.InputStreamReader;
import com.github.ojil.core.Error;
import com.github.ojil.core.Gray8Image;
import com.github.ojil.core.Gray8MaskedImage;
import com.github.ojil.core.Gray8OffsetImage;
import com.github.ojil.core.Image;
import com.github.ojil.core.PipelineStage;
/**
* DetectHaar applies a Haar cascade at multiple locations and multiple scales
* to an input Gray8Image. The result is a mask with the masked (non-Byte.MIN_VALUE)
* locations indicating the areas where the feature was detected.
* The Haar cascade is applied at multiple scales, starting with the coarsest scale,
* and working down to the finest scale. At each scale, the cascade is applied to
* subimages spread across the image. If the cascade detects a feature, the area of
* the mask corresponding to that subimage is set to Byte.MAX_VALUE. When a subimage
* is to be tested, the mask is first examined to see if the central pixel in the
* mask area corresponding to that subimage is masked. If it is, the subimage is
* skipped. When transitioning to a finer scale, the mask is stretched to the new
* size. This results in areas where features have been detected at a coarser scale
* not being re-searched at a finer scale.
* Gray8DetectHaarMultiScale is structured as a pipeline stage so push'ing an image
* results in a new mask being available on getFront. The mask can be further processed
* by doing connected component detection to determine the feature characteristics,
* or the mask can be displayed in an overlay on the original image to show the
* feature areas.
* @author webb
*/
public class Gray8DetectHaarMultiScale extends PipelineStage {
private HaarClassifierCascade hcc;
// maximum scale is the largest factor the image is divided by
private int nMaxScale = 10;
// minimum scale is the smallest factor the image is divided by
private int nMinScale = 5;
// scale change is the change in scale from one search to the next
// times 256
private int nScaleChange = 12 * 256 / 10;
/**
* Creates a new instance of Gray8DetectHaarMultiScale. The scale parameters correspond
* to the size of a square area in the original input image that are averaged to
* create a single pixel in the image used for detection. A scale factor of 1 would
* do detection at full image resolution.
* @param is Input stream containing the Haar cascade. This input stream is created
* by the Haar2J2me program (run on a PC) from a Haar cascade that has been
* trained using the OpenCV. See {http://sourceforge.net/projects/opencv} for
* more information about the OpenCV. The Haar2J2me program should be available
* wherever you got this code from.
* @param nMinScale Minimum (finest) scale at which features will be detected.
* @param nMaxScale Maximum (coarsest) scale at which features will be detected.
* @throws com.github.ojil.core.Error if there is an error in the input file.
* @throws java.io.IOException if there is an I/O error reading the input file.
*/
public Gray8DetectHaarMultiScale(InputStream is, int nMinScale, int nMaxScale)
throws com.github.ojil.core.Error, IOException
{
this.nMinScale = nMinScale;
this.nMaxScale = nMaxScale;
// load Haar classifier cascade
InputStreamReader isr = new InputStreamReader(is);
this.hcc = HaarClassifierCascade.fromStream(isr);
}
/**
* Apply multi-scale Haar cascade and prepare a mask image showing where features
* were detected.
* @param image Input Gray8Image.
* @throws com.github.ojil.core.Error if the input is not a Gray8Image or is too small.
*/
public void push(Image image) throws com.github.ojil.core.Error
{
Gray8Image imGray;
if (image instanceof Gray8Image) {
imGray = (Gray8Image) image;
} else {
throw new Error(
Error.PACKAGE.ALGORITHM,
ErrorCodes.IMAGE_NOT_GRAY8IMAGE,
image.toString(),
null,
null);
}
if (image.getWidth() < this.hcc.getWidth() ||
image.getHeight() < this.hcc.getHeight()) {
throw new Error(
Error.PACKAGE.ALGORITHM,
ErrorCodes.IMAGE_TOO_SMALL,
image.toString(),
this.hcc.toString(),
null);
}
int nScale = Math.min(this.nMaxScale,
Math.min(image.getWidth() / this.hcc.getWidth(),
image.getHeight() / this.hcc.getHeight()));
// Zero the mask
Gray8Image imMask = new Gray8Image(1,1,Byte.MIN_VALUE);
while (nScale >= this.nMinScale) {
// shrink the input image
int nTargetWidth = imGray.getWidth() / nScale;
int nTargetHeight = imGray.getHeight() / nScale;
Gray8Shrink gs = new Gray8Shrink(nTargetWidth, nTargetHeight);
gs.push(imGray);
Gray8Image imShrunk = (Gray8Image) gs.getFront();
// scale the mask to the new size
Gray8RectStretch grs = new Gray8RectStretch(nTargetWidth, nTargetHeight);
grs.push(imMask);
imMask = (Gray8Image) grs.getFront();
// combine the image and mask to make a masked image
Gray8MaskedImage gmi = new Gray8MaskedImage(imShrunk, imMask);
// pass the masked image to a subimage generator
MaskedGray8SubImgGen mgsi = new MaskedGray8SubImgGen(
this.hcc.getWidth(),
this.hcc.getHeight(),
Math.max(1, gmi.getWidth() / 30),
Math.max(1, gmi.getHeight() / 30));
mgsi.push(gmi);
// now run Haar detection on each scaled image
int nxLastFound = -hcc.getWidth();
int nyLastFound = -hcc.getHeight();
while (!mgsi.isEmpty()) {
Gray8OffsetImage imSub = (Gray8OffsetImage) mgsi.getFront();
// if we've found a feature recently we skip forward until
// we're outside the masked region. There's no point rerunning
// the detector
if (imSub.getXOffset() > nxLastFound + hcc.getWidth() &&
imSub.getYOffset() > nyLastFound + hcc.getHeight()) {
if (hcc.eval(imSub)) {
// Found something.
nxLastFound = imSub.getXOffset();
nyLastFound = imSub.getYOffset();
// assign Byte.MAX_VALUE to the feature area so we don't
// search it again
Gray8Rect gr = new Gray8Rect(nxLastFound,
nyLastFound,
this.hcc.getWidth(),
this.hcc.getHeight(),
Byte.MAX_VALUE);
gr.push(imMask);
imMask = (Gray8Image) gr.getFront();
}
}
}
nScale = nScale * 256 / this.nScaleChange;
}
// Stretch imMask to original image size; this is the result
Gray8RectStretch grs = new Gray8RectStretch(image.getWidth(), image.getHeight());
grs.push(imMask);
super.setOutput(grs.getFront());
}
/**
* Set minimum and maximum scale.
* @param nMinScale The finest scale -- a scale factor of 1 corresponds to the full image resolution.
* @param nMaxScale The coarsest scale. A scale factor equal to the image width (for a square
* image) would mean the entire image is reduced to a single pixel.
* Note. The maximum scale actually used is the maximum of this
* number and the scale which would reduce the image size to the smallest
* size that the image used in the Haar cascade would fit inside.
*/
public void setScale(int nMinScale, int nMaxScale) {
this.nMinScale = nMinScale;
this.nMaxScale = nMaxScale;
}
}
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