Feature Extraction Approach in Hyperspectral Data

URL: https://www.atlantis-press.com/proceedings/estic-21/125962214

In general, feature extraction deals with the problem of finding the most informative, distinctive, and reduced set of features and improve the success of data processing. The features should contain information required to distinguish between classes, be insensitive to irrelevant variability in the input, and also be limited in number, to permit, efficient computation of the applied functions and to limit the amount of data required. In many cases, it is an important step in the solutions of many tasks aiming to extract the relevant information from the available large datasets. The aim of this study is to apply a feature extraction approach to a hyperspectral image and extract different features from the dataset and reduce its dimensionality into meaningful orthogonal features. The final analysis was performed in a test site situated in central Mongolia using 242 band Hyperion data. Overall, the study indicated that the Hyperion hyperspectral data could be effectively reduced into meaningful features through a feature extraction process.

Энэ нөөцөд зориулж үүсгэсэн харагдац байхгүй байна

Нэмэлт мэдээлэл

Талбар Утга
Өгөгдлийн сүүлийн шинэчлэл 2021 11-р сар 3
Мета өгөгдөлийн сүүлийн шинэчлэл 2021 11-р сар 3
Үүссэн 2021 11-р сар 3
Хэлбэр Тодорхой бус
Ашиглах зөвшөөрөл Бусад (Нээлттэй)
created2 жилээс өмнө
id830212a8-58e9-4d38-8035-adb91f219769
package idb4acdf0d-d1b1-4d69-880a-e9b1e6de322b
revision id8d30634c-31cb-46bb-a13b-b69097dfd2dc
stateactive