scholarly journals Multi-Sensor Approach to Automated Classification of Sea Ice Image Data

2005 ◽  
Vol 43 (7) ◽  
pp. 1648-1664 ◽  
Author(s):  
A.V. Bogdanov ◽  
S. Sandven ◽  
O.M. Johannessen ◽  
V.Yu. Alexandrov ◽  
L.P. Bobylev

Author(s):  
L Bobylev ◽  
V Alexandrov ◽  
S Sandven ◽  
O Johannessen ◽  
A Bogdanov

2007 ◽  
pp. 293-323
Author(s):  
L Bobylev ◽  
S Sandven ◽  
O Johannessen ◽  
V Alexandrov ◽  
A Bogdanov

2012 ◽  
Vol 52 (No. 4) ◽  
pp. 181-187 ◽  
Author(s):  
F. Hájek

This paper describes the automated classification of tree species composition from Ikonos 4-meter imagery using an object-oriented approach. The image was acquired over a man-planted forest area with the proportion of various forest types (conifers, broadleaved, mixed) in the Krušné hory Mts., Czech Republic. In order to enlarge the class signature space, additional channels were calculated by low-pass filtering, IHS transformation and Haralick texture measures. Employing these layers, image segmentation and classification were conducted on several levels to create a hierarchical image object network. The higher level separated the image into smaller parts regarding the stand maturity and structure, the lower (detailed) level assigned individual tree clusters into classes for the main forest species. The classification accuracy was assessed by comparing the automated technique with the field inventory using Kappa coefficient. The study aimed to create a rule-base transferable to other datasets. Moreover, the appropriate scale of common image data and utilisation in forestry management are evaluated.


Author(s):  
GOZDE UNAL ◽  
GAURAV SHARMA ◽  
REINER ESCHBACH

Photography, lithography, xerography, and inkjet printing are the dominant technologies for color printing. Images produced on these "different media" are often scanned either for the purpose of copying or creating an electronic representation. For an improved color calibration during scanning, a media identification from the scanned image data is desirable. In this paper, we propose an efficient algorithm for automated classification of input media into four major classes corresponding to photographic, lithographic, xerographic and inkjet. Our technique exploits the strong correlation between the type of input media and the spatial statistics of corresponding images, which are observed in the scanned images. We adopt ideas from spatial statistics literature, and design two spatial statistical measures of dispersion and periodicity, which are computed over spatial point patterns generated from blocks of the scanned image, and whose distributions provide the features for making a decision. We utilize extensive training data and determined well separated decision regions to classify the input media. We validate and tested our classification technique results over an independent extensive data set. The results demonstrate that the proposed method is able to distinguish between the different media with high reliability.


2012 ◽  
Author(s):  
Sebastian Gross ◽  
Stephan Palm ◽  
Jens J. W. Tischendorf ◽  
Alexander Behrens ◽  
Christian Trautwein ◽  
...  

2021 ◽  
Author(s):  
Nils Friedrich Grauhan ◽  
Keno Kyrill Bressem ◽  
Yves Nicolas Manzoni ◽  
Lisa Christine Adams ◽  
Valeria Rios-Rodgriguez ◽  
...  

Abstract BackgroundWell-informed decisions about how to best treat patients with axial spondyloarthritis (SpA) regularly include an evaluation of the sacroiliac joints (SIJ) on plain radiographs. However, grading radiographic findings correctly has proven to be a considerable challenge to expert readers as well as to state-of-the-art convolutional neural networks (CNNs). A method to reduce image information to the clinically relevant core would undoubtedly lead to more accurate results. We, therefore, trained a CNN only to detect SIJs on radiographs and evaluated its potential as a preprocessing pipeline in the automated classification of SpA.Materials and MethodsWe employed a CNN of the RetinaNet architecture, which was trained on a total of 423 plain radiographs of the sacroiliac joints (SIJs). Images were taken from two completely independent datasets. Training and tuning were performed on image data from the Patients With Axial Spondyloarthritis (PROOF) study and testing was executed using images from the German Spondyloarthritis Inception Cohort (GESPIC). Performance was evaluated by manual review and standard object detection metrics from PASCAL and Microsoft COCO.ResultsThe CNN produced excellent results in detecting SIJs on the tuning (n =106) and on the holdout dataset (n =140). Object detection metrics for the tuning data were AP = 0.996 and mAP = 0.538; values for the independent holdout data were AP = 0.981 and mAP = 0.515. ConclusionsThe developed CNN was highly accurate in detecting SIJs on radiographs. Such a model could increase the reliability of deep learning-based algorithms in detecting and grading SpA.


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