I found constructing this table a useful exercise as it gave me a clear visual summary and help me fully understand the differences. To evaluate any model, you can use k-fold cross-validation. And this time we will look at how to perform supervised classification in ENVI. The supervised classification was ap-plied after defined area of interest (AOI) which is called training classes. The previous post was dedicated to picking the right supervised classification method. Supervised Classification ... Two widely used measures in remote sensing are “overall accuracy” and “kappa”. Throughout the lectures on classification I realised that it was a very important part of remote sensing and was able to construct a table of advantages and disadvantages of supervised and unsupervised classification. 4.5.3 Supervised classification methods. Supervised classification can be much more accurate than unsupervised classification, but depends heavily on the training sites, the skill of the individual processing the image, and the spectral distinctness of the classes. images: one is referred to as supervised classification and the other one is unsupervised classification. We will take parallelepiped classification as an example as it is mathematically the easiest algorithm. 6. Xavier Ceamanos, Silvia Valero, in Optical Remote Sensing of Land Surface, 2016. Classification. In supervised classification (in contrast to unsupervised classification) reference classes are used as additional information. More than one training area was used to represent a particular class. Supervised Classification Using Erdas Imagine software. To evaluate any model, you can use k-fold cross-validation (you can also do single-fold). “Supervised classification is the process most frequently used for quantitative analyses of remote sensing image data” [9]. Supervised Classification The second classification method involves “training” the computer to recognize the spectral characteristics of the features that you’d like to identify on the map. You can perform the accuracy assessment using the independent samples. The principles behind Supervised Classification are considered in more detail. Supervised classification requires previously classified reference samples (the GT) in order to train the classifier and subsequently classify unknown data. Once you’ve identified the training areas, you ask the software to put the pixels into one of the feature classes or leave them “unclassified.” This process safely determines which classes are the result of the classification. In ENVI working with any other type of supervised classification is very similar to […] These can be used as alternative approaches, but are often combined into hybrid methodologies using more than one method (Richards, Jia 2006). The fact that the pixel DNs for a specified number of bands are selected from areas in the scene that are a priori of known identity, i.e., can be named as classes of real features, materials, etc. Remote Sensing Core Curriculum 1530 Cleveland Ave N, 115 Green Hall, St. Paul, MN 55108 (612) 625-5354 | jknight@umn.edu Brilliant Remote Sensing Labs FZ LLE (“BRS-Labs”) provides this website (including the registered user or distributer service) to you under the following terms and conditions: Use of this Site . Supervised Classification ... Two widely used measures in remote sensing are “overall accuracy” and “kappa”. Introduction to Remote Sensing. You can perform the accuracy assessment using the independent samples (validation2011). 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