2015年11月09日-11月12日
美国
Recent developments in neural networks (or deep learning) for visual recognition have attracted the interest of internet search engines and social media sites. This interest has been driven by a desire to efficiently analyze visual content in images to help generate searchable tags enabling automated classification of the images.
The biological and biomedical science communities are rife with examples of research and clinical image data that needs to be manually classified, ranging from segmenting and annotating digital pathology images to tracking masses in digital breast tomosynthesis. A large percentage of time and effort of highly trained medical professionals is spent on manual or semi-automated identification of regions of interest. There is an urgent need to develop unsupervised or minimally supervised approaches to identifying various regions of interest within biomedical images and to the classification and generation of metadata for archived images. Besides the obvious advantages of saving time and effort, such approaches can enable the development of a biomedical visual search engine which will allow researchers and clinicians to scan through large datasets and find appropriate sets of images of interest.
征文范围及要求:
The topics include, but are not limited to:
Hybrid learning approaches using minimal training data
Pattern recognition
Unsupervised deep learning
Dynamic object tracking
Multi-object classification
Automated region annotation
Efficient image feature searching
Longitudinal change analysis
Psychophysics of visual search in complex images
Hybrid visual-memory search in humans
会议日期
医脉通医学会议