Librarian View

LEADER 03471cam a22004695i 4500
001 11324073
005 20200724065216.0
006 m d
007 cr nn 008mamaa
008 130326s2013 xxu| s |||| 0|eng d
020
  
  
|a 9781461465348 |9 978-1-4614-6534-8
024
7
  
|a 10.1007/978-1-4614-6534-8 |2 doi
035
  
  
|a (DE-He213)978-1-4614-6534-8
035
  
  
|a 11324073
050
  
4
|a QA76.575
072
  
7
|a UG |2 bicssc
072
  
7
|a COM034000 |2 bisacsh
082
0
4
|a 006.7 |2 23
100
1
  
|a Karasulu, Bahadir.
245
1
0
|a Performance Evaluation Software |h [electronic resource] : |b Moving Object Detection and Tracking in Videos / |c by Bahadir Karasulu, Serdar Korukoglu.
260
  
  
|a New York, NY : |b Springer New York : |b Imprint: Springer, |c 2013.
300
  
  
|a XV, 76 p. 11 illus. |b digital.
490
1
  
|a SpringerBriefs in Computer Science, |x 2191-5768
505
0
  
|a Introduction -- Moving Object Detection and Tracking in Videos -- A Software Approach to Performance Evaluation -- Performance Measures and Evaluation -- A Case Study: People Detection and Tracking in Videos -- Conclusion.
506
  
  
|a Access restricted by licensing agreement.
520
  
  
|a Performance Evaluation Software: Moving Object Detection and Tracking in Videos introduces a software approach for the real-time evaluation and performance comparison of the methods specializing in moving object detection and/or tracking (D&T) in video processing. Digital video content analysis is an important item for multimedia content-based indexing (MCBI), content-based video retrieval (CBVR) and visual surveillance systems. There are some frequently-used generic algorithms for video object D&T in the literature, such as Background Subtraction (BS), Continuously Adaptive Mean-shift (CMS), Optical Flow (OF), etc. An important problem for performance evaluation is the absence of any stable and flexible software for comparison of different algorithms. In this frame, we have designed and implemented the software for comparing and evaluating the well-known video object D&T algorithms on the same platform. This software is able to compare them with the same metrics in real-time and on the same platform. It also works as an automatic and/or semi-automatic test environment in real-time, which uses the image and video processing essentials, e.g. morphological operations and filters, and ground-truth (GT) XML data files, charting/plotting capabilities, etc. Along with the comprehensive literature survey of the abovementioned video object D&T algorithms, this book also covers the technical details of our performance benchmark software as well as a case study on people D&T for the functionality of the software.
590
  
  
|a Access is available to the Yale community.
650
  
0
|a Computer science.
650
  
0
|a Multimedia systems.
700
1
  
|a Korukoglu, Serdar.
710
2
  
|a SpringerLink (Online service)
730
0
  
|a Springer ebooks.
776
0
8
|i Printed edition: |z 9781461465331
830
  
0
|a SpringerBriefs in computer science.
852
8
0
|z Online Resource
856
4
0
|y Online book |u https://yale.idm.oclc.org/login?URL=http://dx.doi.org/10.1007/978-1-4614-6534-8
901
  
  
|a QA76.575
902
  
  
|a Yale Internet Resource |b Yale Internet Resource >> None|DELIM|11475954
905
  
  
|a online resource
907
  
  
|a 2013-04-03T12:00:50.000Z
946
  
  
|a DO NOT EDIT. DO NOT EXPORT.
953
4
0
|a http://dx.doi.org/10.1007/978-1-4614-6534-8