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。

Pairwise-Learning Framework for Image Quality Assessment

技术优势
Significantly increased accuracy Consistent with human visual perception
技术应用
Video encoding Perceptual Image Error AssessmentImage searchingPreference predictions
详细技术说明
Researchers at the University of California, Santa Barbara have created a data-driven, machine-learning approach called the Pairwise-Learning Framework (PLF) that can automatically compute visual error between two images of a given scene in a manner that is consistent with human visual perception. The output of PLF is the probability that humans would prefer one thing over the other. This approach allows a computer to automatically predict how a human would answer questions such as: Which image appears more clearly? How good is this movie? Would people prefer advertisement A or B? These questions can be answered by simply training the pairwise-learning framework on responses from humans who have been asked to select from a pair of possible choices of the media in question. The unique characteristic of this approach is that despite training on human preference of image pairs, the PLF architecture allows the learned function to predict single image visual error or quality values after the training/optimization process is complete. This approach has proved to be more accurate than the state-of-the-art.
*Abstract
A data-driven, machine-learning approach called the Pairwise-Learning Framework (PLF) that can automatically compute visual error between two images of a given scene in a manner that is consistent with human visual perception.
*Principal Investigation

Name: Hong Cai

Department:


Name: Yasamin Mostofi

Department:


Name: Ekta Prashnani

Department:


Name: Pradeep Sen

Department:

其他

Background

Creating mathematical models capable of predicting human preferences is a difficult task. Yet, algorithms and various approaches have been attempted. However, these approaches either use hand-coded models which fail to capture the complexity of the human visual system or they use data-driven approaches which are based on small and unreliable datasets. Some pairwise-selection approaches have offered higher levels of success however even these have problems with converting preferences into actual quality scores. Additional problems include noise and other issues that affect estimated scores making them unreliable and difficult to scale to larger datasets. And so, image quality assessments would benefit from an approach that resolves these challenges.


Additional Technologies by these Inventors


Tech ID/UC Case

29490/2018-613-0


Related Cases

2018-613-0

国家/地区
美国

欲了解更多信息,请点击 这里
移动设备