Abstract

The smart city concept has attracted high research attention in recent years within diverse application domains, such as crime suspect identification, border security, transportation, aerospace, and so on. Specific focus has been on increased automation using data driven approaches, while leveraging remote sensing and real-time streaming of heterogenous data from various resources, including unmanned aerial vehicles, surveillance cameras, and low-earth-orbit satellites. One of the core challenges in exploitation of such high temporal data streams, specifically videos, is the trade-off between the quality of video streaming and limited transmission bandwidth. An optimal compromise is needed between video quality and subsequently, recognition and understanding and efficient processing of large amounts of video data. This research proposes a novel unified approach to lossy and lossless video frame compression, which is beneficial for the autonomous processing and enhanced representation of high-resolution video data in various domains. The proposed fast block matching motion estimation technique, namely mean predictive block matching, is based on the principle that general motion in any video frame is usually coherent. This coherent nature of the video frames dictates a high probability of a macroblock having the same direction of motion as the macroblocks surrounding it. The technique employs the partial distortion elimination algorithm to condense the exploration time, where partial summation of the matching distortion between the current macroblock and its contender ones will be used, when the matching distortion surpasses the current lowest error. Experimental results demonstrate the superiority of the proposed approach over state-of-the-art techniques, including the four step search, three step search, diamond search, and new three step search.

Highlights

  • Over 60% of the world’s population lives in urban areas, which indicates the exigency of smart city developments across the globe, to overcome planning, social, and sustainability challenges [1,2] in urban areas

  • The simulation results indicate that the proposed algorithm (MPBM) outperformed the state-of-the-art methods in terms of computational complexity

  • The simulation results indicate that the proposed algorithm, when used as a lossless block matching algorithm, reduces the search times in macroblock matching, while preserving the resolution of the predicted frames

Read more

Summary

Introduction

Over 60% of the world’s population lives in urban areas, which indicates the exigency of smart city developments across the globe, to overcome planning, social, and sustainability challenges [1,2] in urban areas. The ‘INDEPENDENT’ newspaper [12] and ‘WIRED’magazine [13] reported 98% of the Metropolitan and South Wales Police facial recognition technology misidentify suspects These statistics indicate a major gap in existing technology, which needs to be investigated to deal with challenges associated with the autonomous processing of high temporal video data for intelligent decision making in smart city applications. The proposed algorithm speeds up the search process and efficiently reduces the computational complexity In this case, the performance of the proposed technique is evaluated using the mean value of two motion vectors for the above and left previous neighboring macroblocks to determine the new search window.

Fast Block Matching Algorithms
Fixed Set of Search Patterns
Predictive Search
9: End 7L:oop Compute the SI where
1: IF MB is in top left corner: 2: Search 5 LPS points 3: ELSE
Lossy Predictive Mean Block Matching Algorithm
Findings
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call