Enhanced and Efficient Frameworks of Mining Trajectory Patterns of Heterogeneous Time-related Tightness

  • C SHANKER Sri Indu College of Engg and Technology
  • B. SHIVA Tirumala Institute Science &Technology
Keywords: Index Terms—Trajectory pattern mining, synchronous movement patterns, motion object trajectories, trajectory clustering

Abstract

Trajectory pattern Mining detects extreme use of advanced communications to refer
comprehensive motion objects. Good count exists on trajectory patterns of literature. Former
methods develop specific trajectory patterns. Other constraints make pattern detection
monotonous and ineffective. Users typically are unaware of type of trajectory patterns that hide
data sets. Main information is with more trajectory patterns arranged to strength of sequential
constraints. This paper is a study of methods that reveals Comprehensive framework of mining
of trajectory patterns to Heterogeneous time-related tightness. The Comprehensive Trajectory
Patterns (CT-patterns) contains two phases: Initial pattern discovery and granularity adjustment.
Initial patterns detect the Primary phase and the granularity accustoms merge and split to detect
the types in secondary phase and results in structure in pattern forest. The construction reveals
variety patterns resulting a guide to the information-theoretic formula especially to user
intervention. Experimental results demonstrate the framework facilitates of the patterns and
discloses the real-world trajectory data. The study aims remedy of deficiency and introduces a
complete geospatial knowledge discovery framework with Trajectory Patterns mining algorithm
for detection of spatial patterns. Emphasis is on developing various a methodologies to
incorporate spatial relations and spatial dependencies by forming Trajectory patterns. Novel
visualization techniques and geographical knowledge evaluate various schemes as proposed.

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Author Biographies

C SHANKER, Sri Indu College of Engg and Technology

Assistant Professor, Computer Science Engineering,

B. SHIVA, Tirumala Institute Science &Technology

Assistant Professor, Computer Science Engineering,

Published
2015-07-31
How to Cite
SHANKER, C., & SHIVA, B. (2015). Enhanced and Efficient Frameworks of Mining Trajectory Patterns of Heterogeneous Time-related Tightness. IJRDO -Journal of Computer Science Engineering, 1(7), 21-28. https://doi.org/10.53555/cse.v1i7.920