National Repository of Grey Literature 28 records found  1 - 10nextend  jump to record: Search took 0.00 seconds. 
Analyzing a person’s handwriting for recognizing his/her emotional state
Chudárek, Aleš ; Matoušek, Jiří (referee) ; Malik, Aamir Saeed (advisor)
Rozpoznávání emocí z rukopisu je náročný a interdisciplinární úkol, který může poskytnout vhled do psychologického a emočního stavu pisatele. V této diplomové práci byl vyvinut a vyhodnocen model strojového učení schopný predikovat emoční stav pisatele na základě vzorků jeho rukopisu. Byl využit dataset EMOTHAW, který obsahuje vzorky rukopisu a kreseb od subjektů, jejichž emoční stavy byly změřeny pomocí testu DASS, který hodnotí úroveň deprese, úzkosti a stresu, a CIU Handwritten databázi pro ověření a experimentování. Bylo extrahováno množství příznaků inspirovaných standardní grafologií, stejně jako příznaky specifické pro online data. Pomocí ANOVA byly vybrány statisticky významné příznaky, které byly normalizovány pomocí Z-Score, MinMax, IQR nebo logaritmické transformace. Dimenzionalita příznaků byla snížena pomocí analýzy hlavních komponent (PCA) a lineární diskriminační analýzy (LDA). Pro klasifikaci byl použit meta-přístup Ensemble learning, který se snaží snížit chyby jednoho jednoduchého modelu využitím rozmanitosti a doplňkovosti více modelů. Struktura klasifikátoru závisí na mnoha argumentech, což vede k více než 300 000 různým konfiguracím. Optimální argumenty a tudíž optimální struktura byla hledána pomocí zamrazování argumentů. Byly identifikovány nejlepší klasifikátory pro binární a trinární klasifikaci každé emoce, což vedlo k šesti optimálním modelům. Tyto modely byly hodnoceny pomocí různých metrik, jako jsou accuracy, precision, recall a F1 Skóre, a dosáhly adekvátních výsledků ve všech metrikách. Kromě nalezení klasifikátorů tato práce zkoumala význam každého extrahovaného příznaku, čímž byl vytvořen seznam nejvýznamnějších příznaků použitých pro rozpoznávání emocí z rukopisu. Dále tato práce rozšiřuje databázi EMOTHAW identifikací úkolů, které jsou více indikativní pro specifické emoce, čímž se snižuje potřeba kompletní baterie úkolů pro emoční analýzu.
Features for the analysis and classification of cells in holographic microscope images
Navrátilová, Markéta ; Kolář, Radim (referee) ; Vičar, Tomáš (advisor)
This thesis deals with features used for analysis and classification of cell images captured by holographic microscope. Distinctive features are described together with tools for their classification. Features are extracted on provided segmented cells with use of Matlab programming environment. Based on extracted features the cells are classified by SVM classificator. With use of clustering methods and dimensionality reduction different cell types are analyzed. Reliabity of each feature is tested.
Detection of similarity in program codes
Maťašová, Kristýna ; Vítek, Martin (referee) ; Kašpar, Jakub (advisor)
The Bachelor introduces the concept of plagiarism and possible kinds of plagiarism. It focuses on the problem of detecting the similarity of source codes, especially with graphical interfaces in the MATLAB environment. It also describes already existing detectors. The practical part of thesis is focused on finding appropriate flags for detection of similarity in source codes and introduces the metric of detected flags. It also describes the internal logic of created detector of similarity and discusses the results of its testing.
Establishing speaker's age and sex
Rendek, Tomáš ; Pfeifer, Václav (referee) ; Atassi, Hicham (advisor)
This work deals with speaker´s age and gender recognition. At the beginning it introduces the practical usage of this application and discusses the solutions available. The theoretical part of the thesis specifies the feature extraction and reduction methods and speech databases used in the experiments. The practical part describes the recognizer implemented in the Emotional tool and in two chapters describes the individual experiments. Regarding speaker´s gender estimation; we focused on the impact of the emotional state and speaker's age on the classification process. The two remain experiments were dedicated for general gender estimation performed by using two different classifiers – GMM and k-NN. These two classifiers were used in age estimation as well. In this case, four Group of age was formed and two different feature sets namely: segmental and suprasegmental were exploited four groups
Automatizovaná detekce makromolekulárních komplexů z kvantitativních STEM snímků a výpočet jejich molekulární hmotnosti
Záchej, Samuel ; Walek, Petr (referee) ; Hrubanová, Kamila (advisor)
This bachelor’s thesis deals with problems of processing and analysis of images from quantitative STEM microscope. The thesis describes principles of image formation and methods of image processing. An essential part is a description of properties and classification of detected macromolecular complexes. A practical part includes processing of exemplary images in MATLAB. An important part is a design and realization of the algorithm for detection objects in the image, their classification and calculation of their molecular mass. The thesis includes testing of used algorithms and analysis of the results.
Objects Classification in Images
Gabriel, Petr ; Petyovský, Petr (referee) ; Janáková, Ilona (advisor)
This master's thesis deal with problems of classification objects on the basis of atributes get from images. This thesis pertain to a branch of computer vision. Describe possible instruments of classification (e.g. neural networks, decision tree, etc.). Essential part is description objects by means of atributes. They are imputs to classifier. Practical part of this thesis deal with classification of object collection, which can be usually found at home (e.g. scissors, compact disc, sticky, etc.). Analyzed image is preprocessed , segmented by thresholding in HSV color map. Then defects caused by a segmentation are reconstructed by morfological operations. After are determined atribute values, which are imputs to classifier. Classifier has form of decision tree.
Automatic / Automated recogniton of emotional states based on utterance analysis
Pfeifer, Leon ; Atassi, Hicham (referee) ; Smékal, Zdeněk (advisor)
The diploma thesis deals with the analysis of human emotional states. The thesis consists of three parts. The first part is charcterize, the process of speech generating, from phonetic and psychological poin of view. In the second part there are proccesed metods and contextual things.(preprocessing of signal, voice activity detector). For calculation fundamental Frequency it was used metod of central clipping, another used metod is formant frequency analyse and the last is metod of determinatin of nuber of thorns and planes. In the thirt part there are proccesesed results of measurements performed by particural metods. It was scorred five different emotional states: neutral, anger, happiness, sadness and surprise. At the end of this part there are discussed results for each metod.
Image similarity measurement using points of interest
Jelínek, Ondřej ; Uher, Václav (referee) ; Burget, Radim (advisor)
This paper presents a new object detection method. The method is based on keypoints analysis and their parameters. Computed parameters are used for building a decision model using machine learning methods. The model is able to detect object in the picture based on input data and compares its similarity to the chosen example. The new method is described in detail, its accuracy is evaluated and this accuracy is compared to other existing detectors. The new method’s detection ability is by more than 40% better than detection ability of detectors like SURF. In order to understand the object detection this paper describes the process step by step including popular algorithms designed for specific roles in each step.
Parkinson disease diagnosis using speech signal analysis
Karásek, Michal ; Smékal, Zdeněk (referee) ; Mekyska, Jiří (advisor)
The thesis deals with the recognition of Parkinson's disease from the speech signal. The first part refers to the principles of speech signals and speech signals by patients suffering from Parkinson's disease. Further, it continues to describe the issues of speech signals processing, basic symptoms used for diagnosis of Parkinson's disease (e. g. VAI, VSA, FCR, VOT etc.) and reduction of these symptoms. The next part focuses on a block diagram of the program for the diagnosis of Parkinson's disease. The main objective of this thesis is comparison of two methods of feature selection (mRMR and SFFS). For classification have selected two different methods were used. The first method is classification kNN and second method of classification is Gaussian mixture model (GMM).
Plagiarism detection of text documents
Nezval, Jiří ; Kašpar, Jakub (referee) ; Vítek, Martin (advisor)
This thesis informs the reader about plagiarism. It explaines basic methods and approaches of its detection. Furthermore, it contains a practical part realized in the Matlab enviroment involving creating a plagiarism detector. The detector was tested on a database of real thesis. Graphic user interface is also implemented into the detector.

National Repository of Grey Literature : 28 records found   1 - 10nextend  jump to record:
Interested in being notified about new results for this query?
Subscribe to the RSS feed.