提交 a2234791 编写于 作者: V Vadim Pisarevsky

Merge pull request #3099 from f-morozov:akaze_tutorial

......@@ -46,7 +46,7 @@ Source Code
Explanation
===========
1. **Load images and homography**
#. **Load images and homography**
.. code-block:: cpp
......@@ -59,7 +59,7 @@ Explanation
We are loading grayscale images here. Homography is stored in the xml created with FileStorage.
2. **Detect keypoints and compute descriptors using AKAZE**
#. **Detect keypoints and compute descriptors using AKAZE**
.. code-block:: cpp
......@@ -72,7 +72,7 @@ Explanation
We create AKAZE object and use it's *operator()* functionality. Since we don't need the *mask* parameter, *noArray()* is used.
3. **Use brute-force matcher to find 2-nn matches**
#. **Use brute-force matcher to find 2-nn matches**
.. code-block:: cpp
......@@ -82,7 +82,7 @@ Explanation
We use Hamming distance, because AKAZE uses binary descriptor by default.
4. **Use 2-nn matches to find correct keypoint matches**
#. **Use 2-nn matches to find correct keypoint matches**
.. code-block:: cpp
......@@ -99,7 +99,7 @@ Explanation
If the closest match is *ratio* closer than the second closest one, then the match is correct.
5. **Check if our matches fit in the homography model**
#. **Check if our matches fit in the homography model**
.. code-block:: cpp
......@@ -125,7 +125,7 @@ Explanation
We create a new set of matches for the inliers, because it is required by the drawing function.
6. **Output results**
#. **Output results**
.. code-block:: cpp
......@@ -150,12 +150,10 @@ Found matches
A-KAZE Matching Results
--------------------------
Keypoints 1: 2943
Keypoints 2: 3511
Matches: 447
Inliers: 308
Inliers Ratio: 0.689038
::code-block:: none
Keypoints 1: 2943
Keypoints 2: 3511
Matches: 447
Inliers: 308
Inlier Ratio: 0.689038
.. _akazeTracking:
AKAZE and ORB planar tracking
******************************
Introduction
------------------
In this tutorial we will compare *AKAZE* and *ORB* local features
using them to find matches between video frames and track object movements.
The algorithm is as follows:
* Detect and describe keypoints on the first frame, manually set object boundaries
* For every next frame:
#. Detect and describe keypoints
#. Match them using bruteforce matcher
#. Estimate homography transformation using RANSAC
#. Filter inliers from all the matches
#. Apply homography transformation to the bounding box to find the object
#. Draw bounding box and inliers, compute inlier ratio as evaluation metric
.. image:: images/frame.png
:height: 480pt
:width: 640pt
:alt: Result frame example
:align: center
Data
===========
To do the tracking we need a video and object position on the first frame.
You can download our example video and data from `here <https://docs.google.com/file/d/0B72G7D4snftJandBb0taLVJHMFk>`_.
To run the code you have to specify input and output video path and object bounding box.
.. code-block:: none
./planar_tracking blais.mp4 result.avi blais_bb.xml.gz
Source Code
===========
.. literalinclude:: ../../../../samples/cpp/tutorial_code/features2D/AKAZE_tracking/planar_tracking.cpp
:language: cpp
:linenos:
:tab-width: 4
Explanation
===========
Tracker class
--------------
This class implements algorithm described abobve
using given feature detector and descriptor matcher.
* **Setting up the first frame**
.. code-block:: cpp
void Tracker::setFirstFrame(const Mat frame, vector<Point2f> bb, string title, Stats& stats)
{
first_frame = frame.clone();
(*detector)(first_frame, noArray(), first_kp, first_desc);
stats.keypoints = (int)first_kp.size();
drawBoundingBox(first_frame, bb);
putText(first_frame, title, Point(0, 60), FONT_HERSHEY_PLAIN, 5, Scalar::all(0), 4);
object_bb = bb;
}
We compute and store keypoints and descriptors from the first frame and prepare it for the output.
We need to save number of detected keypoints to make sure both detectors locate roughly the same number of those.
* **Processing frames**
#. Locate keypoints and compute descriptors
.. code-block:: cpp
(*detector)(frame, noArray(), kp, desc);
To find matches between frames we have to locate the keypoints first.
In this tutorial detectors are set up to find about 1000 keypoints on each frame.
#. Use 2-nn matcher to find correspondences
.. code-block:: cpp
matcher->knnMatch(first_desc, desc, matches, 2);
for(unsigned i = 0; i < matches.size(); i++) {
if(matches[i][0].distance < nn_match_ratio * matches[i][1].distance) {
matched1.push_back(first_kp[matches[i][0].queryIdx]);
matched2.push_back( kp[matches[i][0].trainIdx]);
}
}
If the closest match is *nn_match_ratio* closer than the second closest one, then it's a match.
2. Use *RANSAC* to estimate homography transformation
.. code-block:: cpp
homography = findHomography(Points(matched1), Points(matched2),
RANSAC, ransac_thresh, inlier_mask);
If there are at least 4 matches we can use random sample consensus to estimate image transformation.
3. Save the inliers
.. code-block:: cpp
for(unsigned i = 0; i < matched1.size(); i++) {
if(inlier_mask.at<uchar>(i)) {
int new_i = static_cast<int>(inliers1.size());
inliers1.push_back(matched1[i]);
inliers2.push_back(matched2[i]);
inlier_matches.push_back(DMatch(new_i, new_i, 0));
}
}
Since *findHomography* computes the inliers we only have to save the chosen points and matches.
4. Project object bounding box
.. code-block:: cpp
perspectiveTransform(object_bb, new_bb, homography);
If there is a reasonable number of inliers we can use estimated transformation to locate the object.
Results
=======
You can watch the resulting `video on youtube <http://www.youtube.com/watch?v=LWY-w8AGGhE>`_.
*AKAZE* statistics:
.. code-block:: none
Matches 626
Inliers 410
Inlier ratio 0.58
Keypoints 1117
*ORB* statistics:
.. code-block:: none
Matches 504
Inliers 319
Inlier ratio 0.56
Keypoints 1112
......@@ -194,7 +194,7 @@ Learn about how to use the feature points detectors, descriptors and matching f
*Author:* Fedor Morozov
Use *AKAZE* local features to find correspondence between two images.
Using *AKAZE* local features to find correspondence between two images.
===================== ==============================================
......@@ -202,6 +202,21 @@ Learn about how to use the feature points detectors, descriptors and matching f
:height: 90pt
:width: 90pt
===================== ==============================================
|AkazeTracking| **Title:** :ref:`akazeTracking`
*Compatibility:* > OpenCV 3.0
*Author:* Fedor Morozov
Using *AKAZE* and *ORB* for planar object tracking.
===================== ==============================================
.. |AkazeTracking| image:: images/AKAZE_Tracking_Tutorial_Cover.png
:height: 90pt
:width: 90pt
.. raw:: latex
\pagebreak
......@@ -221,3 +236,4 @@ Learn about how to use the feature points detectors, descriptors and matching f
../feature_homography/feature_homography
../detection_of_planar_objects/detection_of_planar_objects
../akaze_matching/akaze_matching
../akaze_tracking/akaze_tracking
......@@ -226,7 +226,7 @@ Class implementing the AKAZE keypoint detector and descriptor extractor, describ
float threshold = 0.001f, int octaves = 4, int sublevels = 4, int diffusivity = DIFF_PM_G2);
};
.. note:: AKAZE descriptor can only be used with KAZE or AKAZE keypoints
.. note:: AKAZE descriptors can only be used with KAZE or AKAZE keypoints. Try to avoid using *extract* and *detect* instead of *operator()* due to performance reasons.
.. [ANB13] Fast Explicit Diffusion for Accelerated Features in Nonlinear Scale Spaces. Pablo F. Alcantarilla, Jesús Nuevo and Adrien Bartoli. In British Machine Vision Conference (BMVC), Bristol, UK, September 2013.
......
......@@ -209,6 +209,10 @@ namespace cv
options.descriptor_size = descriptor_size;
options.img_width = img.cols;
options.img_height = img.rows;
options.dthreshold = threshold;
options.omax = octaves;
options.nsublevels = sublevels;
options.diffusivity = diffusivity;
AKAZEFeatures impl(options);
impl.Create_Nonlinear_Scale_Space(img1_32);
......@@ -237,6 +241,10 @@ namespace cv
options.descriptor_size = descriptor_size;
options.img_width = img.cols;
options.img_height = img.rows;
options.dthreshold = threshold;
options.omax = octaves;
options.nsublevels = sublevels;
options.diffusivity = diffusivity;
AKAZEFeatures impl(options);
impl.Create_Nonlinear_Scale_Space(img1_32);
......
......@@ -106,14 +106,22 @@ CV_INIT_ALGORITHM(GFTTDetector, "Feature2D.GFTT",
CV_INIT_ALGORITHM(KAZE, "Feature2D.KAZE",
obj.info()->addParam(obj, "upright", obj.upright);
obj.info()->addParam(obj, "extended", obj.extended))
obj.info()->addParam(obj, "extended", obj.extended);
obj.info()->addParam(obj, "threshold", obj.threshold);
obj.info()->addParam(obj, "octaves", obj.octaves);
obj.info()->addParam(obj, "sublevels", obj.sublevels);
obj.info()->addParam(obj, "diffusivity", obj.diffusivity))
///////////////////////////////////////////////////////////////////////////////////////////////////////////
CV_INIT_ALGORITHM(AKAZE, "Feature2D.AKAZE",
obj.info()->addParam(obj, "descriptor_channels", obj.descriptor_channels);
obj.info()->addParam(obj, "descriptor", obj.descriptor);
obj.info()->addParam(obj, "descriptor_size", obj.descriptor_size))
obj.info()->addParam(obj, "descriptor_channels", obj.descriptor_channels);
obj.info()->addParam(obj, "descriptor_size", obj.descriptor_size);
obj.info()->addParam(obj, "threshold", obj.threshold);
obj.info()->addParam(obj, "octaves", obj.octaves);
obj.info()->addParam(obj, "sublevels", obj.sublevels);
obj.info()->addParam(obj, "diffusivity", obj.diffusivity))
///////////////////////////////////////////////////////////////////////////////////////////////////////////
......
......@@ -158,6 +158,10 @@ namespace cv
options.img_height = img.rows;
options.extended = extended;
options.upright = upright;
options.dthreshold = threshold;
options.omax = octaves;
options.nsublevels = sublevels;
options.diffusivity = diffusivity;
KAZEFeatures impl(options);
impl.Create_Nonlinear_Scale_Space(img1_32);
......@@ -185,6 +189,10 @@ namespace cv
options.img_height = img.rows;
options.extended = extended;
options.upright = upright;
options.dthreshold = threshold;
options.omax = octaves;
options.nsublevels = sublevels;
options.diffusivity = diffusivity;
KAZEFeatures impl(options);
impl.Create_Nonlinear_Scale_Space(img1_32);
......
#include <opencv2/features2d.hpp>
#include <opencv2/videoio.hpp>
#include <opencv2/opencv.hpp>
#include <vector>
#include <iostream>
#include <iomanip>
#include "stats.h" // Stats structure definition
#include "utils.h" // Drawing and printing functions
using namespace std;
using namespace cv;
const double akaze_thresh = 3e-4; // AKAZE detection threshold set to locate about 1000 keypoints
const double ransac_thresh = 2.5f; // RANSAC inlier threshold
const double nn_match_ratio = 0.8f; // Nearest-neighbour matching ratio
const int bb_min_inliers = 100; // Minimal number of inliers to draw bounding box
const int stats_update_period = 10; // On-screen statistics are updated every 10 frames
class Tracker
{
public:
Tracker(Ptr<Feature2D> _detector, Ptr<DescriptorMatcher> _matcher) :
detector(_detector),
matcher(_matcher)
{}
void setFirstFrame(const Mat frame, vector<Point2f> bb, string title, Stats& stats);
Mat process(const Mat frame, Stats& stats);
Ptr<Feature2D> getDetector() {
return detector;
}
protected:
Ptr<Feature2D> detector;
Ptr<DescriptorMatcher> matcher;
Mat first_frame, first_desc;
vector<KeyPoint> first_kp;
vector<Point2f> object_bb;
};
void Tracker::setFirstFrame(const Mat frame, vector<Point2f> bb, string title, Stats& stats)
{
first_frame = frame.clone();
(*detector)(first_frame, noArray(), first_kp, first_desc);
stats.keypoints = (int)first_kp.size();
drawBoundingBox(first_frame, bb);
putText(first_frame, title, Point(0, 60), FONT_HERSHEY_PLAIN, 5, Scalar::all(0), 4);
object_bb = bb;
}
Mat Tracker::process(const Mat frame, Stats& stats)
{
vector<KeyPoint> kp;
Mat desc;
(*detector)(frame, noArray(), kp, desc);
stats.keypoints = (int)kp.size();
vector< vector<DMatch> > matches;
vector<KeyPoint> matched1, matched2;
matcher->knnMatch(first_desc, desc, matches, 2);
for(unsigned i = 0; i < matches.size(); i++) {
if(matches[i][0].distance < nn_match_ratio * matches[i][1].distance) {
matched1.push_back(first_kp[matches[i][0].queryIdx]);
matched2.push_back( kp[matches[i][0].trainIdx]);
}
}
stats.matches = (int)matched1.size();
Mat inlier_mask, homography;
vector<KeyPoint> inliers1, inliers2;
vector<DMatch> inlier_matches;
if(matched1.size() >= 4) {
homography = findHomography(Points(matched1), Points(matched2),
RANSAC, ransac_thresh, inlier_mask);
}
if(matched1.size() < 4 || homography.empty()) {
Mat res;
hconcat(first_frame, frame, res);
stats.inliers = 0;
stats.ratio = 0;
return res;
}
for(unsigned i = 0; i < matched1.size(); i++) {
if(inlier_mask.at<uchar>(i)) {
int new_i = static_cast<int>(inliers1.size());
inliers1.push_back(matched1[i]);
inliers2.push_back(matched2[i]);
inlier_matches.push_back(DMatch(new_i, new_i, 0));
}
}
stats.inliers = (int)inliers1.size();
stats.ratio = stats.inliers * 1.0 / stats.matches;
vector<Point2f> new_bb;
perspectiveTransform(object_bb, new_bb, homography);
Mat frame_with_bb = frame.clone();
if(stats.inliers >= bb_min_inliers) {
drawBoundingBox(frame_with_bb, new_bb);
}
Mat res;
drawMatches(first_frame, inliers1, frame_with_bb, inliers2,
inlier_matches, res,
Scalar(255, 0, 0), Scalar(255, 0, 0));
return res;
}
int main(int argc, char **argv)
{
if(argc < 4) {
cerr << "Usage: " << endl <<
"akaze_track input_path output_path bounding_box" << endl;
return 1;
}
VideoCapture video_in(argv[1]);
VideoWriter video_out(argv[2],
(int)video_in.get(CAP_PROP_FOURCC),
(int)video_in.get(CAP_PROP_FPS),
Size(2 * (int)video_in.get(CAP_PROP_FRAME_WIDTH),
2 * (int)video_in.get(CAP_PROP_FRAME_HEIGHT)));
if(!video_in.isOpened()) {
cerr << "Couldn't open " << argv[1] << endl;
return 1;
}
if(!video_out.isOpened()) {
cerr << "Couldn't open " << argv[2] << endl;
return 1;
}
vector<Point2f> bb;
FileStorage fs(argv[3], FileStorage::READ);
if(fs["bounding_box"].empty()) {
cerr << "Couldn't read bounding_box from " << argv[3] << endl;
return 1;
}
fs["bounding_box"] >> bb;
Ptr<Feature2D> akaze = Feature2D::create("AKAZE");
akaze->set("threshold", akaze_thresh);
Ptr<Feature2D> orb = Feature2D::create("ORB");
Ptr<DescriptorMatcher> matcher = DescriptorMatcher::create("BruteForce-Hamming");
Tracker akaze_tracker(akaze, matcher);
Tracker orb_tracker(orb, matcher);
Stats stats, akaze_stats, orb_stats;
Mat frame;
video_in >> frame;
akaze_tracker.setFirstFrame(frame, bb, "AKAZE", stats);
orb_tracker.getDetector()->set("nFeatures", stats.keypoints);
orb_tracker.setFirstFrame(frame, bb, "ORB", stats);
Stats akaze_draw_stats, orb_draw_stats;
int frame_count = (int)video_in.get(CAP_PROP_FRAME_COUNT);
Mat akaze_res, orb_res, res_frame;
for(int i = 1; i < frame_count; i++) {
bool update_stats = (i % stats_update_period == 0);
video_in >> frame;
akaze_res = akaze_tracker.process(frame, stats);
akaze_stats += stats;
if(update_stats) {
akaze_draw_stats = stats;
}
orb_tracker.getDetector()->set("nFeatures", stats.keypoints);
orb_res = orb_tracker.process(frame, stats);
orb_stats += stats;
if(update_stats) {
orb_draw_stats = stats;
}
drawStatistics(akaze_res, akaze_draw_stats);
drawStatistics(orb_res, orb_draw_stats);
vconcat(akaze_res, orb_res, res_frame);
video_out << res_frame;
cout << i << "/" << frame_count - 1 << endl;
}
akaze_stats /= frame_count - 1;
orb_stats /= frame_count - 1;
printStatistics("AKAZE", akaze_stats);
printStatistics("ORB", orb_stats);
return 0;
}
#ifndef STATS_H
#define STATS_H
struct Stats
{
int matches;
int inliers;
double ratio;
int keypoints;
Stats() : matches(0),
inliers(0),
ratio(0),
keypoints(0)
{}
Stats& operator+=(const Stats& op) {
matches += op.matches;
inliers += op.inliers;
ratio += op.ratio;
keypoints += op.keypoints;
return *this;
}
Stats& operator/=(int num)
{
matches /= num;
inliers /= num;
ratio /= num;
keypoints /= num;
return *this;
}
};
#endif // STATS_H
#ifndef UTILS_H
#define UTILS_H
#include <opencv2/core.hpp>
#include <vector>
#include "stats.h"
using namespace std;
using namespace cv;
void drawBoundingBox(Mat image, vector<Point2f> bb);
void drawStatistics(Mat image, const Stats& stats);
void printStatistics(string name, Stats stats);
vector<Point2f> Points(vector<KeyPoint> keypoints);
void drawBoundingBox(Mat image, vector<Point2f> bb)
{
for(unsigned i = 0; i < bb.size() - 1; i++) {
line(image, bb[i], bb[i + 1], Scalar(0, 0, 255), 2);
}
line(image, bb[bb.size() - 1], bb[0], Scalar(0, 0, 255), 2);
}
void drawStatistics(Mat image, const Stats& stats)
{
static const int font = FONT_HERSHEY_PLAIN;
stringstream str1, str2, str3;
str1 << "Matches: " << stats.matches;
str2 << "Inliers: " << stats.inliers;
str3 << "Inlier ratio: " << setprecision(2) << stats.ratio;
putText(image, str1.str(), Point(0, image.rows - 90), font, 2, Scalar::all(255), 3);
putText(image, str2.str(), Point(0, image.rows - 60), font, 2, Scalar::all(255), 3);
putText(image, str3.str(), Point(0, image.rows - 30), font, 2, Scalar::all(255), 3);
}
void printStatistics(string name, Stats stats)
{
cout << name << endl;
cout << "----------" << endl;
cout << "Matches " << stats.matches << endl;
cout << "Inliers " << stats.inliers << endl;
cout << "Inlier ratio " << setprecision(2) << stats.ratio << endl;
cout << "Keypoints " << stats.keypoints << endl;
cout << endl;
}
vector<Point2f> Points(vector<KeyPoint> keypoints)
{
vector<Point2f> res;
for(unsigned i = 0; i < keypoints.size(); i++) {
res.push_back(keypoints[i].pt);
}
return res;
}
#endif // UTILS_H
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