Title :
On Understanding Big Data Impacts in Remotely Sensed Image Classification Using Support Vector Machine Methods
Author :
Cavallaro, Gabriele ; Riedel, Morris ; Richerzhagen, Matthias ; Benediktsson, Jon Atli ; Plaza, Antonio
Author_Institution :
Fac. of Electr. & Comput. Eng., Univ. of Iceland, Reykjavik, Iceland
Abstract :
Owing to the recent development of sensor resolutions onboard different Earth observation platforms, remote sensing is an important source of information for mapping and monitoring natural and man-made land covers. Of particular importance is the increasing amounts of available hyperspectral data originating from airborne and satellite sensors such as AVIRIS, HyMap, and Hyperion with very high spectral resolution (i.e., high number of spectral channels) containing rich information for a wide range of applications. A relevant example is the separation of different types of land-cover classes using the data in order to understand, e.g., impacts of natural disasters or changing of city buildings over time. More recently, such increases in the data volume, velocity, and variety of data contributed to the term big data that stand for challenges shared with many other scientific disciplines. On one hand, the amount of available data is increasing in a way that raises the demand for automatic data analysis elements since many of the available data collections are massively underutilized lacking experts for manual investigation. On the other hand, proven statistical methods (e.g., dimensionality reduction) driven by manual approaches have a significant impact in reducing the amount of big data toward smaller smart data contributing to the more recently used terms data value and veracity (i.e., less noise, lower dimensions that capture the most important information). This paper aims to take stock of which proven statistical data mining methods in remote sensing are used to contribute to smart data analysis processes in the light of possible automation as well as scalable and parallel processing techniques. We focus on parallel support vector machines (SVMs) as one of the best out-of-the-box classification methods.
Keywords :
Big Data; data analysis; data mining; geophysical image processing; hyperspectral imaging; image classification; land cover; remote sensing; statistical analysis; support vector machines; AVIRIS; Earth observation platform; HyMap; Hyperion; airborne sensor; big data impact; city building; data collection; data volume; hyperspectral data; land cover mapping; land cover monitoring; natural disaster; parallel processing technique; remotely sensed image classification; satellite sensor; sensor resolution development; smart data analysis process; statistical data mining method; support vector machine method; Big data; Data mining; High performance computing; Hyperspectral imaging; Image classification; Parallel processing; Support vector machines; Big data; data mining; high-performance computing (HPC); image classification; parallel processing; smart data; spatial analysis; support vector machines (SVMs);
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2015.2458855