Abstract

Internet of Things (IoT) realizes the real-time video monitoring of plant propagation or growth in the wild. However, the monitoring time is seriously limited by the battery capacity of the visual sensor, which poses a challenge to the long-working plant monitoring. Video coding is the most consuming component in a visual sensor, it is important to design an energy-efficient video codec in order to extend the time of monitoring plants. This article presents an energy-efficient Compressive Video Sensing (CVS) system to make the visual sensor green. We fuse a context-based allocation into CVS to improve the reconstruction quality with fewer computations. Especially, considering the practicality of CVS, we extract the contexts of video frames from compressive measurements but not from original pixels. Adapting to these contexts, more measurements are allocated to capture the complex structures but fewer to the simple structures. This adaptive allocation enables the low-complexity recovery algorithm to produce high-quality reconstructed video sequences. Experimental results show that by deploying the proposed context-based CVS system on the visual sensor, the rate-distortion performance is significantly improved when comparing it with some state-of-the-art methods, and the computational complexity is also reduced, resulting in a low energy consumption.

Highlights

  • In the Internet of Things (IoT), the plant propagation process or plant growth can be monitored by visual sensors

  • Peak Signalto-Noise Ratio (PSNR) is used to evaluate the qualities of reconstructed video sequences, and the bitrate denotes the average amount of bits per pixel to encode a video sequence

  • A context-based Compressive Video Sensing (CVS) system is proposed to improve the visual quality of the reconstructed video sequences

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Summary

Introduction

In the Internet of Things (IoT), the plant propagation process or plant growth can be monitored by visual sensors. With the limited processing capabilities and power/energy budget of visual sensors, it is a challenge for video monitoring of plant to compress large-scale video sequences by using the traditional codec, e.g., H.264/AVC and HEVC (Sullivan et al, 2012), so the existing works have developed low-complexity and energy-efficient video codecs, in which Distributed Video Coding (DVC) (Girod et al, 2005) and Compressive Video Sensing (CVS) (Baraniuk et al, 2017) have attracted more attention in industry and academia. Many researchers recognize that CVS is a potential scheme to compress the video sequences in the IoT framework, and especially for wireless video monitoring of plants, the CVS scheme can assist visual sensors to efficiently reduce the energy consumptions, its rate-distortion performances are still far from satisfactory

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