Strokes of Color 2

Strokes of Color 2
Author: Laura K. De La Cruz
Publisher: Createspace Independent Publishing Platform
Total Pages: 58
Release: 2017-06-19
Genre:
ISBN: 9781548220150

As mentioned in the first "Strokes of Color" coloring book, a stroke can be a debilitating event, often leaving the stroke survivor without full use of limbs. Caregivers have spoken of the need for resources and tools to help with rehabilitation. This coloring book for my friend Cynthia's father. Like the first, it is dedicated to him. Daniel Howard Brown Sept 8, 1929 - Oct 5, 2016

Interaction of Color

Interaction of Color
Author: Josef Albers
Publisher: Yale University Press
Total Pages: 210
Release: 2013-06-28
Genre: Art
ISBN: 0300179359

An experimental approach to the study and teaching of color is comprised of exercises in seeing color action and feeling color relatedness before arriving at color theory.

The Landscape Painter's Workbook

The Landscape Painter's Workbook
Author: Mitchell Albala
Publisher: For Artists
Total Pages: 178
Release: 2022-01-25
Genre: Art
ISBN: 0760371350

"The Landscape Painter's Workbook takes a modern approach to the time-honored techniques and essential elements of landscape painting, from accomplished artist, veteran art instructor, and established author Mitchell Albala"--

Master Strokes

Master Strokes
Author: Hazel Harrison
Publisher: Sterling Publishing Company, Inc.
Total Pages: 100
Release: 2005-05
Genre: Art
ISBN: 9781402722110

"[This book is] unique and exciting...it works beautifully."--Library Journal Hone your skills on depicting water, dramatic landscapes, the nude, still lifes, and nature--all based on celebrated works by Cotman, Constable, Monet, Bonnard, Gainsborough, Fantin-Latour, and Homer. With the masters as inspiration, even budding painters can create evocative watercolors. Each of the seven exciting lessons here focuses on a single masterpiece by a great artist, providing background information, discussions of the work as a whole, and a detailed evaluation of stylistic intricacies. An in-depth examination of the most vital watercolor techniques-including backruns, blending, body color, brushwork, dry brush, glazing, and impressing-reveals all the possibilities of this luscious medium.

Introducing Maya 5

Introducing Maya 5
Author: Dariush Derakhshani
Publisher: John Wiley & Sons
Total Pages: 390
Release: 2006-12-26
Genre: Computers
ISBN: 0470113227

Alias Wavefront's Maya is the premier tool for 3D modeling, animation, and rendering. It is used by such film houses as Industrial, Light & Magic, Pixar, and Disney for creating 3D animation and special effects. This Maya Press title—a cooperative publication between Sybex and Alias Wavefront—is the perfect introduction to 3D and Maya. Note: CD-ROM/DVD and other supplementary materials are not included as part of eBook file.

Cerebrovascular Ultrasound in Stroke Prevention and Treatment

Cerebrovascular Ultrasound in Stroke Prevention and Treatment
Author: Andrei V. Alexandrov
Publisher: John Wiley & Sons
Total Pages: 288
Release: 2008-04-15
Genre: Medical
ISBN: 0470752858

Ultrasound enables us to monitor the cardiovascular system and brain responses to treatment in real time; a genuine blessing on the route to more effective stroke therapies, and an invaluable tool with which to tailor treatment when available evidence is meagre. Ultrasound is a vital observational tool, yet a probe needs a scientist to point it in the right direction and a skilled physician to synthesise scientific data with practical management strategies. This book, intended for clinicians who are eager to learn and prepared to observe, focusses on the examination of stroke patients, the interpretation of ultrasound studies, and the application of cerebrovascular ultrasound to management and treatment strategies. Produced by an international team of contributors and edited at the University of Texas, one of the major world centres in stroke research, it is a practical volume that can be used by beginners to learn the principles of ultrasound testing, by advanced users to learn differential diagnosis, and by clinicians (non-sonographers) who treat stroke patients. The latter will gain knowledge on how to apply ultrasound, and what to expect from it in terms of clinical decision making and treatment selection.

Photoshop CC

Photoshop CC
Author: Elaine Weinmann
Publisher: Peachpit Press
Total Pages: 529
Release: 2014-08-26
Genre: Computers
ISBN: 0133980618

This bestselling guide from authors Elaine Weinmann and Peter Lourekas has been the go-to tutorial and reference book for photography/design professionals and the textbook of choice in college classrooms for decades. This edition includes their trademark features of clear, concise, step-by-step instructions; hundreds of full-color images; screen captures of program features; and supplemental tips and sidebars in every chapter. New and updated Photoshop CC features are clearly marked with bright red stars in both the table of contents and main text.

STROKE: Analysis and Prediction Using Scikit-Learn, Keras, and TensorFlow with Python GUI

STROKE: Analysis and Prediction Using Scikit-Learn, Keras, and TensorFlow with Python GUI
Author: Vivian Siahaan
Publisher: BALIGE PUBLISHING
Total Pages: 359
Release: 2023-07-15
Genre: Computers
ISBN:

In this project, we will perform an analysis and prediction task on stroke data using machine learning and deep learning techniques. The entire process will be implemented with Python GUI for a user-friendly experience. We start by exploring the stroke dataset, which contains information about various factors related to individuals and their likelihood of experiencing a stroke. We load the dataset and examine its structure, features, and statistical summary. Next, we preprocess the data to ensure its suitability for training machine learning models. This involves handling missing values, encoding categorical variables, and scaling numerical features. We utilize techniques such as data imputation and label encoding. To gain insights from the data, we visualize its distribution and relationships between variables. We create plots such as histograms, scatter plots, and correlation matrices to understand the patterns and correlations in the data. To improve model performance and reduce dimensionality, we select the most relevant features for prediction. We employ techniques such as correlation analysis, feature importance ranking, and domain knowledge to identify the key predictors of stroke. Before training our models, we split the dataset into training and testing subsets. The training set will be used to train the models, while the testing set will evaluate their performance on unseen data. We construct several machine learning models to predict stroke. These models include Support Vector, Logistic Regression, K-Nearest Neighbors (KNN), Decision Tree, Random Forest, Gradient Boosting, Light Gradient Boosting, Naive Bayes, Adaboost, and XGBoost. Each model is built and trained using the training dataset. We train each model on the training dataset and evaluate its performance using appropriate metrics such as accuracy, precision, recall, and F1-score. This helps us assess how well the models can predict stroke based on the given features. To optimize the models' performance, we perform hyperparameter tuning using techniques like grid search or randomized search. This involves systematically exploring different combinations of hyperparameters to find the best configuration for each model. After training and tuning the models, we save them to disk using joblib. This allows us to reuse the trained models for future predictions without having to train them again. With the models trained and saved, we move on to implementing the Python GUI. We utilize PyQt libraries to create an interactive graphical user interface that provides a seamless user experience. The GUI consists of various components such as buttons, checkboxes, input fields, and plots. These components allow users to interact with the application, select prediction models, and visualize the results. In addition to the machine learning models, we also implement an ANN using TensorFlow. The ANN is trained on the preprocessed dataset, and its architecture consists of a dense layer with a sigmoid activation function. We train the ANN on the training dataset, monitoring its performance using metrics like loss and accuracy. We visualize the training progress by plotting the loss and accuracy curves over epochs. Once the ANN is trained, we save the model to disk using the h5 format. This allows us to load the trained ANN for future predictions. In the GUI, users have the option to choose the ANN as the prediction model. When selected, the ANN model is loaded from disk, and predictions are made on the testing dataset. The predicted labels are compared with the true labels for evaluation. To assess the accuracy of the ANN predictions, we calculate various evaluation metrics such as accuracy score, precision, recall, and classification report. These metrics provide insights into the ANN's performance in predicting stroke. We create plots to visualize the results of the ANN predictions. These plots include a comparison of the true values and predicted values, as well as a confusion matrix to analyze the classification accuracy. The training history of the ANN, including the loss and accuracy curves over epochs, is plotted and displayed in the GUI. This allows users to understand how the model's performance improved during training. In summary, this project covers the analysis and prediction of stroke using machine learning and deep learning models. It encompasses data exploration, preprocessing, model training, hyperparameter tuning, GUI implementation, ANN training, and prediction visualization. The Python GUI enhances the user experience by providing an interactive and intuitive platform for exploring and predicting stroke based on various features.