home | Download | Guestbook | Sitemap
codelookerDownloadGraph program2D Graphic
Search:
HistoStretchGrays.ZIP
  • Classification:Graph program - 2D Graphic
  • Development Tool:C++ Builder
  • Sise:294 KB
  • Upload time:2012/4/25 17:37:16
  • Uploader:GTSs
  • Download Statistics:
Description
c + + builder program histogram


HistoStretch.ico

File list:
211.JPG
211.JPG
319.JPG
319.JPG
HistogramLibrary.pas
HistoStretch.ico
HistoStretch.ico
HistoStretchGrays.cfg
HistoStretchGrays.dof
HistoStretchGrays.dpr
HistoStretchGrays.exe
HistoStretchGrays.res
ScreenHistoStretchGrays.ddp
ScreenHistoStretchGrays.dfm
ScreenHistoStretchGrays.pas
If you are a member, Log in. If you are not a member, Please register
Related source code
[> compile Remember to also adjust your path so MATLAB can find iHOG: >> addpath(genpath('/path/to/ihog')) If you want to use iHOG in your own project, you can simply drop the iHOG directory into the root of your project. Inverting HOG To invert a HOG point, use the 'invertHOG()' function: >> feat = features(im, 8); >> ihog = invertHOG(feat); >> imagesc(ihog); axis image; Computing the inverse should take no longer than a second for a typical sized image on a modern computer. (It may slower the first time you invoke it as it caches the paired dictionary from disk.) Visualizing HOG iHOG has several functions to visualize HOG. The most basic is 'visualizeHOG()': >> feat = features(im, 8); >> visualizeHOG(feat); The above displays a figure with the HOG glyph and the HOG inverse. This visualization is a drop-in replacement for more standard visualizations, and should work with existing code bases. The de-facto HOG has signed components, unsigned components, as well as texture components. 'dissectHOG()' visualizes each of these components invidually: >> dissectHOG(feat); A similar visualization 'spreadHOG()' shows each dimension individually: >> spreadHOG(feat); More visualizations are available. Check out the 'visualizations/' folder and read the comments for more. Learning We provide a prelearned dictionary in 'pd.mat', but you can learn your own if you wish. Simply call the 'learnpairdict()' function and pass it a directory of images: >> pd = learnpairdict('/path/to/images/', 1000000, 1000, 5, 5); The above learns a 5x5 HOG patch paired dictionary with 1000 elements and a training set size of one million window patches. Depending on the size of the problem, it may take minutes or hours to complete. Bundled Libraries The iHOG package contains source code from the SPAMS sparse coding toolbox (http://spams-devel.gforge.inria.fr/). We have modified their code to better support 64 bit machines. In addition, we have included a select few files from the discriminatively trained deformable parts model (http://people.cs.uchicago.edu/~rbg/latent/). We use their HOG computation code and glyph visualization code. Questions and Comments If you have any feedback, please write to Carl Vondrick at vondrick@mit.edu. References The conference paper for this software is currently under submission. In the mean time, please see our technical report: [1] Carl Vondrick, Aditya Khosla, Tomasz Malisiewicz, Antonio Torralba. "Inverting and Visualizing Features for Object Detection." Technical Report. 2013."" target="_blank">iHOG: Inverting Histograms of Orient...] - iHOG: Inverting Histograms of Oriented Gradients This software package contains tools to invert and visualize HOG features. It implements the Paired Dictionary Learning algorithm described in our paper "Inverting and Visualizing Features for Object Detection" [1]. Installation Before you can use this tool, you must compile iHOG. Execute the 'compile' script in MATLAB to compile the HOG feature extraction code and sparse coding SPAMS toolbox: $ cd /path/to/ihog $ matlab >> compile Remember to also adjust your path so MATLAB can find iHOG: >> addpath(genpath('/path/to/ihog')) If you want to use iHOG in your own project, you can simply drop the iHOG directory into the root of your project. Inverting HOG To invert a HOG point, use the 'invertHOG()' function: >> feat = features(im, 8); >> ihog = invertHOG(feat); >> imagesc(ihog); axis image; Computing the inverse should take no longer than a second for a typical sized image on a modern computer. (It may slower the first time you invoke it as it caches the paired dictionary from disk.) Visualizing HOG iHOG has several functions to visualize HOG. The most basic is 'visualizeHOG()': >> feat = features(im, 8); >> visualizeHOG(feat); The above displays a figure with the HOG glyph and the HOG inverse. This visualization is a drop-in replacement for more standard visualizations, and should work with existing code bases. The de-facto HOG has signed components, unsigned components, as well as texture components. 'dissectHOG()' visualizes each of these components invidually: >> dissectHOG(feat); A similar visualization 'spreadHOG()' shows each dimension individually: >> spreadHOG(feat); More visualizations are available. Check out the 'visualizations/' folder and read the comments for more. Learning We provide a prelearned dictionary in 'pd.mat', but you can learn your own if you wish. Simply call the 'learnpairdict()' function and pass it a directory of images: >> pd = learnpairdict('/path/to/images/', 1000000, 1000, 5, 5); The above learns a 5x5 HOG patch paired dictionary with 1000 elements and a training set size of one million window patches. Depending on the size of the problem, it may take minutes or hours to complete. Bundled Libraries The iHOG package contains source code from the SPAMS sparse coding toolbox (http://spams-devel.gforge.inria.fr/). We have modified their code to better support 64 bit machines. In addition, we have included a select few files from the discriminatively trained deformable parts model (http://people.cs.uchicago.edu/~rbg/latent/). We use their HOG computation code and glyph visualization code. Questions and Comments If you have any feedback, please write to Carl Vondrick at vondrick@mit.edu. References The conference paper for this software is currently under submission. In the mean time, please see our technical report: [1] Carl Vondrick, Aditya Khosla, Tomasz Malisiewicz, Antonio Torralba. "Inverting and Visualizing Features for Object Detection." Technical Report. 2013.
[Img_Histogram] - This code written in Visual Basic 6.0 which shows the Histogram of image
[image_histogram_rgb_3d] - a good way to display Color image histogram. the result image is a 3D image. Very intuitive!
[histogram-equalization-in-matlab] - histogram equalisation code in matlab
[plot-histogram] - Compute and plot (show the image and its histogram) the histogram of flower.pgm, swan.pgm and tools.pgm. Comment on what information can be discerned about the images from an examination of the histogram
[Sledovanie-objektu-na-zaklade-porovn...] - Object tracking by comparing histograms
[Histogram] - Digital Image processing, display the histogram of an image via graph.
[histogramprocessing] - Image enhancement techniques.
[histogram_2] - Code for make histogram of image
[histogram] - histogram equqlization for image processig with matlab
Download Address
download DownLoad
Comments: Don't forget to comment after downloading! Comment...
About - Advertise - Sitemap