Optimizing Data Processing in Space for Object Detection in Satellite Imagery

07/08/2021
by   Martina Lofqvist, et al.
41

There is a proliferation in the number of satellites launched each year, resulting in downlinking of terabytes of data each day. The data received by ground stations is often unprocessed, making this an expensive process considering the large data sizes and that not all of the data is useful. This, coupled with the increasing demand for real-time data processing, has led to a growing need for on-orbit processing solutions. In this work, we investigate the performance of CNN-based object detectors on constrained devices by applying different image compression techniques to satellite data. We examine the capabilities of the NVIDIA Jetson Nano and NVIDIA Jetson AGX Xavier; low-power, high-performance computers, with integrated GPUs, small enough to fit on-board a nanosatellite. We take a closer look at object detection networks, including the Single Shot MultiBox Detector (SSD) and Region-based Fully Convolutional Network (R-FCN) models that are pre-trained on DOTA - a Large Scale Dataset for Object Detection in Aerial Images. The performance is measured in terms of execution time, memory consumption, and accuracy, and are compared against a baseline containing a server with two powerful GPUs. The results show that by applying image compression techniques, we are able to improve the execution time and memory consumption, achieving a fully runnable dataset. A lossless compression technique achieves roughly a 10 execution time and about a 3 on the accuracy. While a lossy compression technique improves the execution time by up to 144 However, it has a significant impact on accuracy, varying depending on the compression ratio. Thus the application and ratio of these compression techniques may differ depending on the required level of accuracy for a particular task.

READ FULL TEXT

page 4

page 5

page 6

page 8

research
07/21/2020

Accelerating Deep Learning Applications in Space

Computing at the edge offers intriguing possibilities for the developmen...
research
04/13/2020

Detecting Straggler MapReduce Tasks in Big Data Processing Infrastructure by Neural Network

Straggler task detection is one of the main challenges in applying MapRe...
research
09/19/2018

FastDeepIoT: Towards Understanding and Optimizing Neural Network Execution Time on Mobile and Embedded Devices

Deep neural networks show great potential as solutions to many sensing a...
research
01/14/2023

Object Detection performance variation on compressed satellite image datasets with iquaflow

A lot of work has been done to reach the best possible performance of pr...
research
05/16/2022

Lost in Compression: the Impact of Lossy Image Compression on Variable Size Object Detection within Infrared Imagery

Lossy image compression strategies allow for more efficient storage and ...
research
12/12/2022

Optimizing ship detection efficiency in SAR images

The detection and prevention of illegal fishing is critical to maintaini...
research
05/18/2023

CS-TRD: a Cross Sections Tree Ring Detection method

This work describes a Tree Ring Detection method for complete Cross-Sect...

Please sign up or login with your details

Forgot password? Click here to reset