This list gives an overview of all modules available inside the contrib repository. To turn off building one of these module repositories, set the names in bold below to
$ cmake -D OPENCV_EXTRA_MODULES_PATH=<opencv_contrib>/modules -D BUILD_opencv_<reponame>=OFF <opencv_source_directory>
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aruco: ArUco and ChArUco Markers -- Augmented reality ArUco marker and "ChARUco" markers where ArUco markers embedded inside the white areas of the checker board.
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bgsegm: Background segmentation algorithm combining statistical background image estimation and per-pixel Bayesian segmentation.
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bioinspired: Biological Vision -- Biologically inspired vision model: minimize noise and luminance variance, transient event segmentation, high dynamic range tone mapping methods.
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ccalib: Custom Calibration -- Patterns for 3D reconstruction, omnidirectional camera calibration, random pattern calibration and multi-camera calibration.
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cnn_3dobj: Deep Object Recognition and Pose -- Uses Caffe Deep Neural Net library to build, train and test a CNN model of visual object recognition and pose.
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contrib_world: opencv_contrib holder -- contrib_world is the module that when built, contains all other opencv_contrib modules. It may be used for the more convenient redistribution of opencv binaries.
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cvv: Computer Vision Debugger -- Simple code that you can add to your program that pops up a GUI allowing you to interactively and visually debug computer vision programs.
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datasets: Datasets Reader -- Code for reading existing computer vision databases and samples of using the readers to train, test and run using that dataset's data.
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dnn: Deep Neural Networks (DNNs) -- This module can read in image recogniton networks trained in the Caffe neural netowrk library and run them efficiently on CPU.
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dnns_easily_fooled: Subvert DNNs -- This code can use the activations in a network to fool the networks into recognizing something else.
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dpm: Deformable Part Model -- Felzenszwalb's Cascade with deformable parts object recognition code.
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face: Face Recognition -- Face recognition techniques: Eigen, Fisher and Local Binary Pattern Histograms LBPH methods.
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fuzzy: Fuzzy Logic in Vision -- Fuzzy logic image transform and inverse; Fuzzy image processing.
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freetype: Drawing text using freetype and harfbuzz.
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hdf: Hierarchical Data Storage -- This module contains I/O routines for Hierarchical Data Format: https://en.m.wikipedia.org/wiki/Hierarchical_Data_Format meant to store large amounts of data.
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line_descriptor: Line Segment Extract and Match -- Methods of extracting, describing and latching line segments using binary descriptors.
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matlab: Matlab Interface -- OpenCV Matlab Mex wrapper code generator for certain opencv core modules.
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optflow: Optical Flow -- Algorithms for running and evaluating deepflow, simpleflow, sparsetodenseflow and motion templates (silhouette flow).
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plot: Plotting -- The plot module allows you to easily plot data in 1D or 2D.
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reg: Image Registration -- Pixels based image registration for precise alignment. Follows the paper "Image Alignment and Stitching: A Tutorial", by Richard Szeliski.
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rgbd: RGB-Depth Processing module -- Linemod 3D object recognition; Fast surface normals and 3D plane finding. 3D visual odometry
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saliency: Saliency API -- Where humans would look in a scene. Has routines for static, motion and "objectness" saliency.
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sfm: Structure from Motion -- This module contains algorithms to perform 3d reconstruction from 2d images. The core of the module is a light version of Libmv.
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stereo: Stereo Correspondence -- Stereo matching done with different descriptors: Census / CS-Census / MCT / BRIEF / MV.
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structured_light: Structured Light Use -- How to generate and project gray code patterns and use them to find dense depth in a scene.
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surface_matching: Point Pair Features -- Implements 3d object detection and localization using multimodal point pair features.
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text: Visual Text Matching -- In a visual scene, detect text, segment words and recognise the text.
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tracking: Vision Based Object Tracking -- Use and/or evaluate one of 5 different visual object tracking techniques.
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xfeatures2d: Features2D extra -- Extra 2D Features Framework containing experimental and non-free 2D feature detector/descriptor algorithms. SURF, SIFT, BRIEF, Censure, Freak, LUCID, Daisy, Self-similar.
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ximgproc: Extended Image Processing -- Structured Forests / Domain Transform Filter / Guided Filter / Adaptive Manifold Filter / Joint Bilateral Filter / Superpixels.
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xobjdetect: Boosted 2D Object Detection -- Uses a Waldboost cascade and local binary patterns computed as integral features for 2D object detection.
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xphoto: Extra Computational Photography -- Additional photo processing algorithms: Color balance / Denoising / Inpainting.