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Organizations spend huge resources in developing software that can
perform the way a human does. Image classification, object
detection and tracking, pose estimation, facial recognition, and
sentiment estimation all play a major role in solving computer
vision problems. This book will bring into focus these and other
deep learning architectures and techniques to help you create
solutions using Keras and the TensorFlow library. You'll also
review mutliple neural network architectures, including LeNet,
AlexNet, VGG, Inception, R-CNN, Fast R-CNN, Faster R-CNN, Mask
R-CNN, YOLO, and SqueezeNet and see how they work alongside Python
code via best practices, tips, tricks, shortcuts, and pitfalls. All
code snippets will be broken down and discussed thoroughly so you
can implement the same principles in your respective environments.
Computer Vision Using Deep Learning offers a comprehensive yet
succinct guide that stitches DL and CV together to automate
operations, reduce human intervention, increase capability, and cut
the costs. What You'll Learn Examine deep learning code and
concepts to apply guiding principals to your own projects Classify
and evaluate various architectures to better understand your
options in various use cases Go behind the scenes of basic deep
learning functions to find out how they work Who This Book Is For
Professional practitioners working in the fields of software
engineering and data science. A working knowledge of Python is
strongly recommended. Students and innovators working on advanced
degrees in areas related to computer vision and Deep Learning.
Gain a thorough understanding of supervised learning algorithms by
developing use cases with Python. You will study supervised
learning concepts, Python code, datasets, best practices,
resolution of common issues and pitfalls, and practical knowledge
of implementing algorithms for structured as well as text and
images datasets. You'll start with an introduction to machine
learning, highlighting the differences between supervised,
semi-supervised and unsupervised learning. In the following
chapters you'll study regression and classification problems,
mathematics behind them, algorithms like Linear Regression,
Logistic Regression, Decision Tree, KNN, Naive Bayes, and advanced
algorithms like Random Forest, SVM, Gradient Boosting and Neural
Networks. Python implementation is provided for all the algorithms.
You'll conclude with an end-to-end model development process
including deployment and maintenance of the model.After reading
Supervised Learning with Python you'll have a broad understanding
of supervised learning and its practical implementation, and be
able to run the code and extend it in an innovative manner. What
You'll Learn Review the fundamental building blocks and concepts of
supervised learning using Python Develop supervised learning
solutions for structured data as well as text and images Solve
issues around overfitting, feature engineering, data cleansing, and
cross-validation for building best fit models Understand the
end-to-end model cycle from business problem definition to model
deployment and model maintenance Avoid the common pitfalls and
adhere to best practices while creating a supervised learning model
using Python Who This Book Is For Data scientists or data analysts
interested in best practices and standards for supervised learning,
and using classification algorithms and regression techniques to
develop predictive models.
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