Full text: Mapping without the sun

METHODS AND APPLICATION OF QUALITY ASSESSMENT FOR REMOTE SENSING 
IMAGE COMPRESSION 
ZHAI Liang 3 ’ *, TANG Xinming 3 , ZHANG Guo b , ZHU Xiaoyong b 
3 Chinese Academy of Surveying and Mapping, 16 Beitaiping Road, Beijing, China - (zhailiang, tang)@casm.ac.cn 
b State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, 
Wuhan, China - guozhang@whu.edu.cn, zhuxytop@163.com 
KEY WORDS: image compression, quality assessment for image compression, JPEG2000, SPIHT, subjective assessment, 
objective assessment 
ABSTRACT: 
Quality assessment for remote sensing image compression is critical to compression algorithm designers and image products users. 
In order to satisfy the users’ demand, image compression index such as image compression ratio should be set down before the 
launch of satellite. Quality assessment for remote sensing image compression is an important objective reference for specifying 
image compression ratio. Effects of compression on image quality include image interpretability quality and geometric quality. 
Centering on subjective and objective assessment, image quality assessment methods and application are proposed for mapping 
using remote sensing images. A prototype system for image quality assessment is proposed and applied to Resources Satellite 3 
compression ratio design. Through a series of experiments, compression ratio is considered to be no more than 4:1 if JPEG2000 or 
improved SPIHT algorithm were employed on board. 
1. INTRODUCTION 
Data compression is the process of encoding information using 
fewer bits than an unencoded representation through use of 
specific encoding schemes. Image compression is one of the 
important aspects of data compression. In the realm of satellite 
remote sensing, image compression is very important because it 
helps reduce the consumption of expensive resources, such as 
hard disk space or transmission bandwidth. According to the 
stage of satellite remote sensing image data processing, 
application of image compression in satellite remote sensing 
can be divided into two aspects. One is on-board image data 
compression, the other is ground image data compression. 
Quality assessment for remote sensing image compression is 
critical to compression algorithm designers and image products 
users. In order to satisfy the users’ demand, image compression 
index such as image compression ratio should be set down 
before the launch of satellite. Quality assessment for remote 
sensing image compression is an important objective reference 
for specifying image compression ratio. 
Many image compression algorithms have emerged in the last 
ten years, while the quality assessment is ignored especially in 
the realm of application, such as surveying and mapping. This 
paper aims at proposing an integral scheme for remote sensing 
image quality assessment. Subjective assessment method is 
examined first. Furthermore, objective assessment including 
imaging quality assessment and geometric quality assessment is 
discussed. Finally, an image quality assessment software is 
introduced. 
2. SUBJECTIVE ASSESSMENT 
Images, which are the result of imaging process mapping 
physical scene properties onto a two-dimensional luminance 
distribution, are carriers of visual information [T.J.W.M. 
Janssen, 1999]. It is a visuo-cognitive process when an observer 
views reconstructed images. Subjective assessment is regarded 
as a golden rule of image quality assessment since human 
observers are the ultimate receivers in most image processing 
environments [Michael P. Eckert et al, 1998; Zhou Wang et al, 
2002a], Usually, subjective quality assessment can be divided 
into quantitative and qualitative assessment. Quantitative 
assessment can be divided into absolute and relative assessment. 
Absolute assessment has a group of reference images while 
relative assessment not. In general, quantitative assessment 
reaches a score according to some rating scale. Ahmet M. 
Eskicioglu has concluded the rating scales having been used by 
former researchers [Ahmet M. Eskicioglu, 2000]. Qualitative 
assessment divides reconstructed image into different grades 
according to grades descriptions. The American aerial imaging 
community utilizes the National Imagery Interpretability Rating 
Scale (NIIRS) to define and measure the quality of images and 
performance of imaging systems. Through a process referred to 
as "rating" an image, the NIIRS is used by imagery analysts to 
assign a number which indicates the interpretability of a given 
image. The NIIRS concept provides a means to directly relate 
the quality of an image to the interpretation tasks for which it 
may be used [K. J. Hermiston et al, 1999]. In essence, the 
difference between qualitative and quantitative assessment is 
the assessment result. Qualitative assessment result will be 
scores, while quantitative assessment result be grades and 
corresponding descriptions. Both qualitative assessment and 
quantitative assessment are common methods used to describe 
reconstructed image quality. 
Fuzzy phenomena is everywhere in the nature, such as 
meteorological phenomena, land cover classification, spatial 
data quality, etc. Image compression quality is also fuzzy. One 
can not tell good or bad simply. Further, image compression 
quality is affected by several distortions and every type of 
distortion has different effects on image quality. As to this, a 
fuzzy comprehensive evaluation method is used in image 
Corresponding author: Male, PhD., majors in satellite remote sensing, spatio-temporal data mining , etc.
	        
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