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Computer Vision Toolbox

Design and test computer vision, 3D vision, and video processing systems

Computer Vision Toolbox™ provides algorithms, functions, and apps for designing and testing computer vision, 3D vision, and video processing systems. You can perform object detection and tracking, as well as feature detection, extraction, and matching. You can automate calibration workflows for single, stereo, and fisheye cameras. For 3D vision, the toolbox supports visual and point cloud SLAM, stereo vision, structure from motion, and point cloud processing. Computer vision apps automate ground truth labeling and camera calibration workflows.

You can train custom object detectors using deep learning and machine learning algorithms such as YOLO v2, SSD, and ACF. For semantic and instance segmentation, you can use deep learning algorithms such as U-Net and Mask R-CNN. The toolbox provides object detection and segmentation algorithms for analyzing images that are too large to fit into memory. Pretrained models let you detect faces, pedestrians, and other common objects.

You can accelerate your algorithms by running them on multicore processors and GPUs. Toolbox algorithms support C/C++ code generation for integrating with existing code, desktop prototyping, and embedded vision system deployment.

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Learn the basics of Computer Vision Toolbox

Feature Detection and Extraction

Image registration, interest point detection, feature descriptor extraction, point feature matching, and image retrieval

Image and Video Ground Truth Labeling

Interactive image and video labeling for object detection, semantic segmentation, instance segmentation, and image classification

Recognition, Object Detection, and Semantic Segmentation

Recognition, classification, semantic image segmentation, object detection using features, and deep learning object detection using CNNs, YOLO v2, and SSD

Camera Calibration

Calibrate single or stereo cameras and estimate camera intrinsics, extrinsics, and distortion parameters using pinhole and fisheye camera models

Structure from Motion and Visual SLAM

Stereo vision, triangulation, 3-D reconstruction, and visual simultaneous localization and mapping (vSLAM)

Point Cloud Processing

Preprocess, visualize, register, fit geometrical shapes, build maps, implement SLAM algorithms, and use deep learning with 3-D point clouds

Tracking and Motion Estimation

Optical flow, activity recognition, motion estimation, and tracking

Code Generation, GPU, and Third-Party Support

C/C++ and GPU code generation and acceleration, HDL code generation, and OpenCV interface for MATLAB and Simulink

Computer Vision With Simulink

Simulink support for computer vision applications