UrbanPro

Learn Data Science from the Best Tutors

  • Affordable fees
  • 1-1 or Group class
  • Flexible Timings
  • Verified Tutors

Search in

What is data augmentation, and why is it used in image processing tasks?

Asked by Last Modified  

Follow 1
Answer

Please enter your answer

Data augmentation is a technique used in image processing and computer vision to artificially increase the size of a dataset by applying various transformations to the existing images. These transformations include, but are not limited to, rotations, flips, zooms, shifts, and changes in brightness...
read more

Data augmentation is a technique used in image processing and computer vision to artificially increase the size of a dataset by applying various transformations to the existing images. These transformations include, but are not limited to, rotations, flips, zooms, shifts, and changes in brightness or contrast. The primary goal of data augmentation is to improve the generalization and robustness of machine learning models by exposing them to a more diverse set of training examples.

Key Aspects of Data Augmentation in Image Processing:

  1. Increased Dataset Size:

    • By generating new images through transformations, data augmentation effectively expands the training dataset. A larger dataset allows machine learning models to capture a broader range of patterns and variations, reducing the risk of overfitting to the training data.
  2. Robustness to Variations:

    • Data augmentation introduces variability in the training set, helping models become more robust to variations and distortions commonly encountered in real-world scenarios. This can include changes in lighting conditions, orientations, and perspectives.
  3. Improved Generalization:

    • Training a model on a more diverse set of images allows it to generalize better to unseen data. The model becomes less sensitive to specific instances or artifacts present in the original dataset.
  4. Addressing Limited Data:

    • In many cases, obtaining a large labeled dataset can be challenging and expensive. Data augmentation provides a cost-effective way to artificially increase the amount of available training data, making it particularly valuable in scenarios with limited annotated examples.
  5. Regularization Effect:

    • Data augmentation acts as a form of regularization, preventing the model from memorizing the training set and encouraging it to learn more invariant and useful features.

Common Image Transformations in Data Augmentation:

  1. Horizontal and Vertical Flips:

    • Flipping images horizontally or vertically to create new variations.
  2. Rotations:

    • Rotating images by a certain angle to introduce variations in orientation.
  3. Zooming:

    • Randomly zooming into or out of images.
  4. Translations:

    • Shifting images horizontally or vertically.
  5. Brightness and Contrast Adjustments:

    • Changing the brightness and contrast of images.
  6. Cropping:

    • Randomly cropping or resizing images.
  7. Noise Injection:

    • Introducing random noise to simulate real-world imperfections.

Implementation Considerations:

  1. Applied During Training:

    • Data augmentation is typically applied only during the training phase. During validation and testing, the original, unaltered images are used to evaluate the model's performance.
  2. Parameters Tuning:

    • The extent of augmentation (e.g., rotation angles, zoom levels) can be adjusted based on the characteristics of the dataset and the desired augmentation effects.
  3. Consistency Across Data Samples:

    • Augmentation is applied consistently across an entire mini-batch to maintain consistency in the learning process.

Data augmentation has proven effective in improving the performance of image classification, object detection, and segmentation models. It is widely used in conjunction with deep learning architectures, such as convolutional neural networks (CNNs), to enhance their ability to handle a diverse range of inputs and achieve better generalization on unseen data.

 
read less
Comments

Related Questions

Which course should a HR professional go for Data Science R or Data Science Python?

 

If you are from a technical background, do Python. Otherwise, do the R Course.
Aditti
Hi, currently I am working as associate systems engineer. But I am really interested in data science. How can I become a data scientist. Please suggest me a path.
Let me comprehend based on my 20 years of working experience. You need to know few things to become a data scientist. 1) Statistics and Mathematics : It is like a doctor having good understanding of...
Vamsi

What is difference between data science and SAP. Which is best in compare for getting jobs as fast as possible

Hi Both have different uniquness with importance value. you will get a good prospectives on SAP for career growth.
Ravindra

Now ask question in any of the 1000+ Categories, and get Answers from Tutors and Trainers on UrbanPro.com

Ask a Question

Related Lessons

Basics of K means classification- An unsupervised learning algorithm
K-means is one of the simplest unsupervised learning algorithms that solve the well-known clustering problem. The procedure follows a simple and easy way to classify a given data set with n objects through...

Just start with confidence for data science
Everyone now speeds up to attend data science classes and parallelly bother about their success. A constant thought remains in their that that whether they would be good at that or not. First of all, let...

Lesson: Hive Queries
Lesson: Hive Queries This lesson will cover the following topics: Simple selects ? selecting columns Simple selects – selecting rows Creating new columns Hive Functions In SQL, of which...
C

Regularisation in Machine Learning
Regularization In Machine Learning, Regularization is the concept of shrinking or regularizing the coefficients towards zero. It helps the model to prevent overfitting. Overfitting in Machine Learning...

What is Dummy Regression?
What is a Dummy variable? A Dummy variable or Indicator Variable is an artificial variable created to represent an attribute with two or more distinct categories/levels. Basically the binary variables...

Recommended Articles

Software Development has been one of the most popular career trends since years. The reason behind this is the fact that software are being used almost everywhere today.  In all of our lives, from the morning’s alarm clock to the coffee maker, car, mobile phone, computer, ATM and in almost everything we use in our daily...

Read full article >

Applications engineering is a hot trend in the current IT market.  An applications engineer is responsible for designing and application of technology products relating to various aspects of computing. To accomplish this, he/she has to work collaboratively with the company’s manufacturing, marketing, sales, and customer...

Read full article >

Almost all of us, inside the pocket, bag or on the table have a mobile phone, out of which 90% of us have a smartphone. The technology is advancing rapidly. When it comes to mobile phones, people today want much more than just making phone calls and playing games on the go. People now want instant access to all their business...

Read full article >

Whether it was the Internet Era of 90s or the Big Data Era of today, Information Technology (IT) has given birth to several lucrative career options for many. Though there will not be a “significant" increase in demand for IT professionals in 2014 as compared to 2013, a “steady” demand for IT professionals is rest assured...

Read full article >

Looking for Data Science Classes?

Learn from the Best Tutors on UrbanPro

Are you a Tutor or Training Institute?

Join UrbanPro Today to find students near you
X

Looking for Data Science Classes?

The best tutors for Data Science Classes are on UrbanPro

  • Select the best Tutor
  • Book & Attend a Free Demo
  • Pay and start Learning

Learn Data Science with the Best Tutors

The best Tutors for Data Science Classes are on UrbanPro

This website uses cookies

We use cookies to improve user experience. Choose what cookies you allow us to use. You can read more about our Cookie Policy in our Privacy Policy

Accept All
Decline All

UrbanPro.com is India's largest network of most trusted tutors and institutes. Over 55 lakh students rely on UrbanPro.com, to fulfill their learning requirements across 1,000+ categories. Using UrbanPro.com, parents, and students can compare multiple Tutors and Institutes and choose the one that best suits their requirements. More than 7.5 lakh verified Tutors and Institutes are helping millions of students every day and growing their tutoring business on UrbanPro.com. Whether you are looking for a tutor to learn mathematics, a German language trainer to brush up your German language skills or an institute to upgrade your IT skills, we have got the best selection of Tutors and Training Institutes for you. Read more