Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection

When measurement rates grow, most Compressive Sensing (CS) methods suffer from an increase in overheads of transmission and storage of CS measurements, while reconstruction quality degrades appreciably when measurement rates reduce. To solve these problems in real scenarios such as large-scale distr...

Full description

Bibliographic Details
Main Authors: Longlong Liao, Kenli Li, Canqun Yang, Jie Liu
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/9/2079
id doaj-b409207f71ad415b9891c540e9a03566
record_format Article
spelling doaj-b409207f71ad415b9891c540e9a035662020-11-25T00:59:38ZengMDPI AGSensors1424-82202019-05-01199207910.3390/s19092079s19092079Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object DetectionLonglong Liao0Kenli Li1Canqun Yang2Jie Liu3College of Computer, National University of Defense Technology, Changsha 410073, ChinaCollege of Computer Science and Electronic Engineering, Hunan University, Changsha 410082, ChinaCollege of Computer, National University of Defense Technology, Changsha 410073, ChinaCollege of Computer, National University of Defense Technology, Changsha 410073, ChinaWhen measurement rates grow, most Compressive Sensing (CS) methods suffer from an increase in overheads of transmission and storage of CS measurements, while reconstruction quality degrades appreciably when measurement rates reduce. To solve these problems in real scenarios such as large-scale distributed surveillance systems, we propose a low-cost image CS approach called MRCS for object detection. It predicts key objects using the proposed MYOLO3 detector, and then samples the regions of the key objects as well as other regions using multiple measurement rates to reduce the size of sampled CS measurements. It also stores and transmits half-precision CS measurements to further reduce the required transmission bandwidth and storage space. Comprehensive evaluations demonstrate that MYOLO3 is a smaller and improved object detector for resource-limited hardware devices such as surveillance cameras and aerial drones. They also suggest that MRCS significantly reduces the required transmission bandwidth and storage space by declining the size of CS measurements, e.g., mean Compression Ratios (mCR) achieves 1.43−22.92 on the VOC-pbc dataset. Notably, MRCS further reduces the size of CS measurements by half-precision representations. Subsequently, the required transmission bandwidth and storage space are reduced by one half as compared to the counterparts represented with single-precision floats. Moreover, it also substantially enhances the usability of object detection on reconstructed images with half-precision CS measurements and multiple measurement rates as compared to its counterpart, using a single low measurement rate.https://www.mdpi.com/1424-8220/19/9/2079compressive sensingmultiple measurement ratesobject detectioncompression ratiohalf-precision float
collection DOAJ
language English
format Article
sources DOAJ
author Longlong Liao
Kenli Li
Canqun Yang
Jie Liu
spellingShingle Longlong Liao
Kenli Li
Canqun Yang
Jie Liu
Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
Sensors
compressive sensing
multiple measurement rates
object detection
compression ratio
half-precision float
author_facet Longlong Liao
Kenli Li
Canqun Yang
Jie Liu
author_sort Longlong Liao
title Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
title_short Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
title_full Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
title_fullStr Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
title_full_unstemmed Low-Cost Image Compressive Sensing with Multiple Measurement Rates for Object Detection
title_sort low-cost image compressive sensing with multiple measurement rates for object detection
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-05-01
description When measurement rates grow, most Compressive Sensing (CS) methods suffer from an increase in overheads of transmission and storage of CS measurements, while reconstruction quality degrades appreciably when measurement rates reduce. To solve these problems in real scenarios such as large-scale distributed surveillance systems, we propose a low-cost image CS approach called MRCS for object detection. It predicts key objects using the proposed MYOLO3 detector, and then samples the regions of the key objects as well as other regions using multiple measurement rates to reduce the size of sampled CS measurements. It also stores and transmits half-precision CS measurements to further reduce the required transmission bandwidth and storage space. Comprehensive evaluations demonstrate that MYOLO3 is a smaller and improved object detector for resource-limited hardware devices such as surveillance cameras and aerial drones. They also suggest that MRCS significantly reduces the required transmission bandwidth and storage space by declining the size of CS measurements, e.g., mean Compression Ratios (mCR) achieves 1.43−22.92 on the VOC-pbc dataset. Notably, MRCS further reduces the size of CS measurements by half-precision representations. Subsequently, the required transmission bandwidth and storage space are reduced by one half as compared to the counterparts represented with single-precision floats. Moreover, it also substantially enhances the usability of object detection on reconstructed images with half-precision CS measurements and multiple measurement rates as compared to its counterpart, using a single low measurement rate.
topic compressive sensing
multiple measurement rates
object detection
compression ratio
half-precision float
url https://www.mdpi.com/1424-8220/19/9/2079
work_keys_str_mv AT longlongliao lowcostimagecompressivesensingwithmultiplemeasurementratesforobjectdetection
AT kenlili lowcostimagecompressivesensingwithmultiplemeasurementratesforobjectdetection
AT canqunyang lowcostimagecompressivesensingwithmultiplemeasurementratesforobjectdetection
AT jieliu lowcostimagecompressivesensingwithmultiplemeasurementratesforobjectdetection
_version_ 1725217165163888640