Main Content

Recognition, Object Detection, and Semantic Segmentation

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

Computer Vision Toolbox™ supports several approaches for image classification, object detection, semantic segmentation, instance segmentation, and recognition, including:

  • Deep learning and convolutional neural networks (CNNs)

  • Bag of features

  • Template matching

  • Blob analysis

  • Viola-Jones algorithm

A CNN is a popular deep learning architecture that automatically learns useful feature representations directly from image data. Bag of features encodes image features into a compact representation suitable for image classification and image retrieval. Template matching uses a small image, or template, to find matching regions in a larger image. Blob analysis uses segmentation and blob properties to identify objects of interest. The Viola-Jones algorithm uses Haar-like features and a cascade of classifiers to identify objects, including faces, noses, and eyes. You can train this classifier to recognize other objects.

Categories

Featured Examples