亚洲知识产权资讯网为知识产权业界提供一个一站式网上交易平台,协助业界发掘知识产权贸易商机,并与环球知识产权业界建立联系。无论你是知识产权拥有者正在出售您的知识产权,或是制造商需要购买技术以提高操作效能,又或是知识产权配套服务供应商,你将会从本网站发掘到有用的知识产权贸易资讯。

Image Recognition Algorithm that Extracts Features for Computer Vision

详细技术说明
None
*Abstract

Quickly and Efficiently Discover Related Images via Search

This algorithm identifies features in images for computer recognition with a much higher success rate than available technologies by incorporating commonly used mathematical transforms. Part of the $5 billion computer vision market, image processing has applications in image retrieval, pattern recognition, and image compression. Image retrieval in particular relies on pattern recognition and feature extraction to find pictures similar to each other. Researchers at the University of Florida have developed an image retrieval algorithm that combines the commonly used radon and wavelet mathematical transforms. This new algorithm, called ripplet-II Transform, efficiently finds related pictures with a higher retrieval and a lower error rate than available technologies.

Application

Algorithm that extracts features from a particular image to find related images

Advantages

  • Overcomes inability to accurately process edges or boundaries of images, allowing for faster and more accurate image searches
  • Increases image retrieval and lowers error rate over ridgelet and wavelet transform, improving image search function
  • Achieves unique representation for 2D images, allowing better feature extraction

Technology

In image processing, it is extremely difficult for computers to process 2D image features called "singularities," sharp edges or distinct lines in images. By combining radon and wavelet transforms, this ripplet-II transform is capable of representing these singularities and using them to find similar or related images. The algorithm is also extremely efficient at classifying textures, and compensating for rotational or transformational variance.
*Principal Investigation

Name: Dapeng Wu

Department:


Name: Jun Xu

Department:

其他
国家/地区
美国

欲了解更多信息,请点击 这里
移动设备