Search results for "Confusion matrix"

showing 5 items of 5 documents

Estimation and visualization of confusability matrices from adaptive measurement data

2010

Abstract We present a simple but effective method based on Luce’s choice axiom [Luce, R.D. (1959). Individual choice behavior: A theoretical analysis. New York: John Wiley & Sons] for consistent estimation of the pairwise confusabilities of items in a multiple-choice recognition task with arbitrarily chosen choice-sets. The method combines the exact (non-asymptotic) Bayesian way of assessing uncertainty with the unbiasedness emphasized in the classical frequentist approach. We apply the method to data collected using an adaptive computer game designed for prevention of reading disability. A player’s estimated confusability of phonemes (or more accurately, phoneme–grapheme connections) and l…

Computer sciencebusiness.industryApplied MathematicsBayesian probabilityConfusion matrixMachine learningcomputer.software_genreComputer gameVisualizationBayesian statisticsFrequentist inferencePairwise comparisonArtificial intelligencebusinesscomputerAlgorithmGeneral PsychologyAxiomJournal of Mathematical Psychology
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Statistical classification and proportion estimation - an application to a macroinvertebrate image database

2010

We apply and compare a random Bayes forest classifier and three traditional classification methods to a dataset of complex benthic macroinvertebrate images of known taxonomical identity. Since in biomonitoring changes in benthic macroinvertebrate taxa proportions correspond to changes in water quality, their correct estimation is pivotal. As classification errors are passed on to the allocated proportions, we explore a correction method known as a confusion matrix correction. Classification methods were compared using the misclassification error and the χ2 distance measures of the true proportions to the allocated and to the corrected proportions. Using low misclassification error and small…

Computer sciencebusiness.industryFeature extractionDecision treeConfusion matrixPattern recognitionBayes classifierDistance measuresStatistical classificationBayes' theoremStatisticsBayes error rateArtificial intelligencebusiness2010 IEEE International Workshop on Machine Learning for Signal Processing
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A Semantic Collaborative Clustering Approach Based on Confusion Matrix

2019

In this paper we discuss about a new images retrieval technique based on clustering. We argue that images don’t have an intrinsic meaning, but they can receive different interpretation. These images can complicate documents retrieval. However, users need a quick and direct access to documents. To answer this requirement, we propose a retrieval approach which use a collaborative clustering technique based on Confusion matrix.

Information retrievalInterpretation (logic)Computer science020204 information systems0202 electrical engineering electronic engineering information engineeringConfusion matrix020207 software engineering02 engineering and technologySemanticsCluster analysisImage retrievalMeaning (linguistics)2019 15th International Conference on Signal-Image Technology & Internet-Based Systems (SITIS)
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A deep semantic segmentation-based algorithm to segment crops and weeds in agronomic color images

2022

Abstract In precision agriculture, the accurate segmentation of crops and weeds in agronomic images has always been the center of attention. Many methods have been proposed but still the clean and sharp segmentation of crops and weeds is a challenging issue for the images with a high presence of weeds. This work proposes a segmentation method based on the combination of semantic segmentation and K-means algorithms for the segmentation of crops and weeds in color images. Agronomic images of two different databases were used for the segmentation algorithms. Using the thresholding technique, everything except plants was removed from the images. Afterward, semantic segmentation was applied usin…

Subtractive colorComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONConfusion matrixForestryAquatic ScienceThresholdingAccurate segmentationComputer Science ApplicationsClassification rateAnimal Science and ZoologySegmentationPrecision agricultureCluster analysisAgronomy and Crop ScienceAlgorithmInformation Processing in Agriculture
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Machine learning analysis of e-nose signal in early detection of mold contamination in buildings

2017

Grzyb rozwijający się na ścianach budynków jest głównym powodem zjawiska, które nazwano Syndromem Chorego Budynku. Wolne związki organiczne emitowane przez grzyby mogą być wykryte różnymi metodami, m.in. na podstawie chromatografii, ale także za pomocą matryc czujników gazowych. Wszystkie tego typu narzędzia generują sygnały elektryczne, które można analizować za pomocą odpowiednich technik statystycznych. Praca skupia się na zastosowaniu nadzorowanych i nienadzorowanych technik uczenia maszynowego w ocenie sygnału pochodzącego z elektronicznego nosa.

electronic nosemould contaminationmultidimensional scalingklasyfikacjaclassificationconfusion matrixmacierz błędnych klasyfikacjielektroniczny nosskalowanie wielowymiaroweporażenie grzybemProceedings of ECOpole
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