DocumentCode
2247675
Title
Partial denoising boundary image matching using time-series matching techniques
Author
Bum-Soo Kim ; Myeong-Seon Gil ; Mi-Jung Choi ; Yang-Sae Moon
Author_Institution
Instute of Telecommun. & Inf., Kangwon Nat. Univ., Chuncheon, South Korea
fYear
2015
fDate
9-11 Feb. 2015
Firstpage
136
Lastpage
141
Abstract
Removing noise, called denoising, is an essential factor for achieving the intuitive and accurate results in boundary image matching. This paper deals with a partial denoising problem that tries to allow a limited amount of noise embedded in boundary images. To solve this problem, we first define partial denoising time-series that can be generated from an original image time-series by removing a variety of partial noises. We then propose an efficient mechanism that quickly obtains those partial denoising time-series in the time-series domain rather than the image domain. Next, we present the partial denoising distance, which is the minimum distance from a query time-series to all possible partial denoising time-series generated from a data time-series. We then use this partial denoising distance as a similarity measure in boundary image matching. Using the partial denoising distance, however, incurs a severe computational overhead since there are a large number of partial denoising time-series to be considered. To solve this problem, we derive a tight lower bound for the partial denoising distance and formally prove its correctness. We also propose partial denoising boundary image matching exploiting the partial denoising distance in boundary image matching. Through extensive experiments, we finally show that our lower bound-based approach improves search performance by up to an order of magnitude in partial denoising-based boundary image matching.
Keywords
image denoising; image matching; image retrieval; time series; computational overhead; data time-series; minimum distance; noise removal; partial-denoising boundary image matching; partial-denoising distance; partial-image denoising time-series; query time-series; search performance improvement; similarity measure; tight lower bound; time-series matching technique; Charge coupled devices; Image databases; Image matching; Noise; Noise reduction; Transforms; Boundary image matching; Data mining; Moving average transform; Partial denoising; Time-series databases; Time-series matching;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data and Smart Computing (BigComp), 2015 International Conference on
Conference_Location
Jeju
Type
conf
DOI
10.1109/35021BIGCOMP.2015.7072823
Filename
7072823
Link To Document