Tag Info

New answers tagged

0

This code is very similar to Surf algorithm http://www.emgu.com/wiki/index.php/SURF_feature_detector_in_CSharp . public Image<Bgr, Byte> PutFeaturesOnImage(string file) { Image<Gray, Byte> modelImage = new Image<Gray, byte>(file); SIFTDetector siftCPU = new SIFTDetector(); VectorOfKeyPoint modelKeyPoints = ...


1

Yes, it is possible. The only thing you have to pay attention is the computational requirement which can be a little overwhelming. If you can narrow the search, that usually help. To support my answer I will extract some examples from a recent work of ours. We aimed at recognizing a painting on a museum's wall using SIFT + RANSAC matching. We have a ...


2

This is because the number of reliable features that are detected per image change. Just because you detect 10 features in one image does not mean that you will be able to detect the same number of features in the other image. What does matter is how close one feature from one image matches with another. What you can do (if you like) is extract the, ...


3

SIFT descriptor chooses a 16x16 and then divides it into 4x4 windows. Over each of these 4 windows it computes a Histogram of Oriented gradients. While computing this histogram, it also performs an interpolation between neighboring angles. Once you have all the 4x4 windows, it uses a gaussian of half the window size, centered at the center of the 16x16 block ...


2

According to the exception log you are working with OpenCV 2.4.6.1. That said you are probably referring to the documentation of a former OpenCV release. As you can see below, the constructor has been modified between 2.3.0 and 2.4.0: OpenCV 2.3.0 SiftFeatureDetector( double threshold, double edgeThreshold, ... ); OpenCV 2.4.0 explicit SIFT( int ...


0

As I understand you want to find the no of keypoints of the two images separately.the given statements below will not produce the exact output you want but I hope this will help you to some extent. this also show some important info regarding the keypoints. If the two images are I & J,then after reading the two images you can add these lines- I = ...


0

Wow! I got the answer from another question: How does the SiftDescriptorExtractor from OpenCV convert descriptor values? "This is because classical SIFT implementations quantize the normalized floating point values into unsigned char integer through a 512 multiplying factor, which is equivalent to consider that any SIFT component varies between [0, 1/2], ...


3

Let me give an example. Assume, I have a phone. If I tell you, it is by COMPANY1, you could recognize it from phones made by other companies. Through, you could not recognize it from all COMPANY1 phones. So this descriptor is not discriminant enough. If I tell you, it is is COMPANY1 and MODEL 5S, you could recognize from much more phones. So it is ...


0

The error was in the line: featureDetector = FeatureDetector.create("SIFT"); I have replaced it with: SIFT sift = new SIFT(); FeatureDetector featureDetector =sift.getFeatureDetector();



Top 50 recent answers are included