The new system, which can automatically annotate entire online collections of photographs as they are uploaded, means significant time-savings for the millions of Internet users who now manually tag or identify their images. It also facilitates retrieval of images through the use of search terms, said James Wang, associate professor in the Penn State College of Information Sciences and Technology, and one of the technology's two inventors.
The
system is described in a paper, "Real-Time Computerized Annotation of
Pictures," given at the recent ACM Multimedia 2006 conference in Santa
Barbara, Calif., and authored by Jia Li, associate professor,
Department of Statistics, and Wang. Penn State has filed a provisional
patent application on the invention. Major search engines currently
rely upon uploaded tags of text to describe images. While many
collections are annotated, many are not. The result: Images without
text tags are not accessible to Web searchers. Because it provides text
tags, the ALIPR system-Automatic Linguistic Indexing of Pictures-Real
Time-makes those images visible to Web users.
ALIPR does this
by analyzing the pixel content of images and comparing that against a
stored knowledge base of the pixel content of tens of thousands of
image examples. The computer then suggests a list of 15 possible
annotations or words for the image.
"By inputting tens of
thousands of images, we have trained computers to recognize certain
objects and concepts and automatically annotate those new or unseen
images," Wang said. "More than half the time, the computer's first tag
out of the top 15 tags is correct."
In addition, for 98
percent of images tested, the system has provided at least one correct
annotation in the top 15 selected words. The system, which completes
the annotation in about 1.4 seconds, also can be applied to other
domains such as art collections, satellite imaging and pathology
slides, Wang said. The new system builds on the authors' previous
invention, ALIP, which also analyzes image content. But unlike ALIP
which characterized images by incorporating computational-intensive
spatial modeling, ALIPR characterizes images by modeling distributions
of color and texture.
The researchers acknowledge computers
trained with their algorithms have difficulties when photos are fuzzy
or have low contrast or resolution; when objects are shown only
partially; and when the angle used by the photographer presents an
image in a way that is different than how the computer was trained on
the object. Adding more training images as well as improving the
training process may reduce these limitations-future areas of research.
Margaret Hopkins | Quelle: EurekAlert!
Weitere Informationen: www.alipr.com
www.psu.edu
![]() |
Mit den subtilen Waffen eines Pilzes
03.11.2006 | Biowissenschaften Chemie
Neue Details zum molekularen Postversand in der Zelle
03.11.2006 | Biowissenschaften Chemie
Neue Studie zur Suchttherapie aus Dresden: Ersatzstofftherapien sind wirksam
03.11.2006 | Studien Analysen