Nowadays online monitoring of data streams is essential in many real life applications, like sensor network monitoring, manufacturing process control, and video surveillance. One major problem in this area is the online identification of streaming sequences similar to a predefined set of pattern-sequences. In this paper, we present a novel solution that extends the state of the art both in terms of effectiveness and efficiency. We propose the first online similarity matching algorithm based on Longest Common SubSequence that is specifically designed to operate in a streaming context, and that can effectively handle time scaling, as well as noisy data. In order to deal with high stream rates and multiple streams, we extend the algorithm to o...
We study the problem of parameterized matching in a stream where we want to output matches between a...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...
We introduce and study the problem of computing the simi- larity self-join in a streaming context (s...
Similarity-based time series retrieval has been a subject of long term study due to its wide usage i...
Continuously identifying pre-defined patterns in a streaming time series has strong demand in variou...
Subsequence similarity matching in time series databases is an im-portant research area for many app...
Similarity search over stream time series has a wide spectrum of applications. Most previous work in...
Similarity-based time-series retrieval has been a subject of long-term study due to its wide usage i...
Recent technological advances in sensor networks and mobile devices give rise to new challenges in p...
Similarity join (SJ) in time-series databases has a wide spectrum of applications such as data clean...
The way similarity is measured among time series is of paramount importance in many data mining and ...
Recently, there has been a growing focus in solving approximate pattern matching problems in the str...
Dynamic Time Warping is a well-known measure of dissimilarity between time series. Due to its flexib...
With the advance of hardware and communication technologies, stream time series is gaining ever- inc...
We study the problem of parameterized matching in a stream where we want to output matches between a...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...
We introduce and study the problem of computing the simi- larity self-join in a streaming context (s...
Similarity-based time series retrieval has been a subject of long term study due to its wide usage i...
Continuously identifying pre-defined patterns in a streaming time series has strong demand in variou...
Subsequence similarity matching in time series databases is an im-portant research area for many app...
Similarity search over stream time series has a wide spectrum of applications. Most previous work in...
Similarity-based time-series retrieval has been a subject of long-term study due to its wide usage i...
Recent technological advances in sensor networks and mobile devices give rise to new challenges in p...
Similarity join (SJ) in time-series databases has a wide spectrum of applications such as data clean...
The way similarity is measured among time series is of paramount importance in many data mining and ...
Recently, there has been a growing focus in solving approximate pattern matching problems in the str...
Dynamic Time Warping is a well-known measure of dissimilarity between time series. Due to its flexib...
With the advance of hardware and communication technologies, stream time series is gaining ever- inc...
We study the problem of parameterized matching in a stream where we want to output matches between a...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...
Online video content is surging to an unprecedented level. Massive video publishing and sharing impo...