A Sequence Structure for Image Change Detection Using Sensor Network

N. Siranjeevi, B. M. Alaudeen

Abstract


Abstract
Change detection in pictures is of nice interest due to its connectedness in several applications like video police work. This article work presents the underlying theoretical drawback of distributed image amendment detection employing a wireless detector network. The planned system consisted of multiple image sensors, which created native choices severally associate degreed send them to a foundation station through an additive white Gaussian noise channel. The bottom station then created a world call and declared whether or not a major amendment had occurred or not. This technique used four thresholds to sight native and world changes within the space being monitored. 2 thresholds outlined at the detector level helped the detector create a neighborhood call, and therefore the remaining 2 thresholds outlined at the system level helped the fusion center create a world call. Hence, by victimization four thresholds, the performance of the planned model was ascertained to own excellent fault tolerance.

Keywords: change detection, qualitative sensor network, thresholds

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References


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DOI: https://doi.org/10.37628/ijoippr.v1i1.91

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