upGrad USA
  • Data Science & Analytics
  • Machine Learning & AI
  • Doctorate of Business Administration
  • MBA
  • More
    • Product and Project Management
    • Digital Marketing
    • Management
    • Coding & Blockchain
    • General
    • Account & Finance
No Result
View All Result
  • Data Science & Analytics
  • Machine Learning & AI
  • Doctorate of Business Administration
  • MBA
  • More
    • Product and Project Management
    • Digital Marketing
    • Management
    • Coding & Blockchain
    • General
    • Account & Finance
No Result
View All Result
upGrad USA
Home USA Blog Machine Learning & AI Understanding Overfitting in Machine Learning and Its Link to Computer Vision

Understanding Overfitting in Machine Learning and Its Link to Computer Vision

Vamshi Krishna sanga by Vamshi Krishna sanga
August 5, 2025
in Machine Learning & AI
Machine Learning Interview Questions & Answers for US-Based Jobs in 2025
Share on TwitterShare on Facebook

Overfitting is one of the biggest challenges for developers regarding computer vision with machine learning. But what is overfitting, and how can you avoid it? Scroll through this article to discover more details about overfitting in machine learning and its connection with computer vision. 

Understanding the Concept of Overfitting

At times, a machine learning model will only accurately predict outcomes for a specific set of training data. It will fail to make the right predictions for new data. This type of undesirable behavior from a machine learning model is called overfitting. 

upgrad referral

An overfitted machine learning model learns too many inaccurate values and noise from the training data. Therefore, it becomes incapable of predicting future observations. As a result, the precision and accuracy of the model no longer remain intact. 

Reasons Behind Overfitting

A model using practical machine learning for computer vision will only deliver accurate predictions by generalizing all types of data inside the domain. However, overfitting occurs due to the inability to generalize, which makes the model fit too closely to the training data. A few reasons behind overfitting are as follows:

1. The training data size is too small and lacks enough samples to correctly represent the potential input data values. 

2. The training data includes heaps of noisy data or irrelevant information. 

3. The machine learning model trains from only one set of sample data for a long time. 

4. The machine learning model is so complex that it learns the noise present within the training data. 

Ways to Prevent Overfitting

When you can diversify or scale your training data, you will be able to prevent overfitting machine learning models. A few data science strategies to prevent overfitting are as follows:

Regularization

This method involves different training or optimization techniques to reduce overfitting. The regularization process eliminates factors that don’t influence the prediction outcomes by checking the importance of different features. 

Early Stopping

If you pause the training before the model learns the noise within the dataset, you can stop overfitting. But finding the right time to pause is crucial. If you end up pausing too fast, your model won’t deliver accurate results. 

Data Augmentation

The machine learning technique changes the sample data before it gets processed by a model. It is possible by modifying the input data in subtle ways like applying flipping, translation, and rotation to images. By performing data augmentation in moderation, you will be able to make your dataset seem unique to the model every time. 

Ensembling

This process involves combining predictions from different machine learning algorithms. Bagging and boosting are two primary ensemble methods. Boosting involves training machine learning models one after the other. Meanwhile, bagging involves training models in parallel. 

Overfitting in Machine Learning

Summing up

Preventing overfitting in computer vision applications is crucial for making them perform accurately against unseen datasets. Different methods are available to prevent a statistical model from fitting exactly against its training data. 

FAQs:

Q.1 What is Unity computer vision?

Unity engine combines different computer vision technologies and libraries to develop different applications. From AR and VR applications to educational tools, Unity and computer vision technologies are combined for various purposes. 

Q.2 What is an under-fitted model in computer vision?

An under-fitted model in computer vision is extremely simple, with minimal features and insufficient data for building an effective model. These models have a low variance and high bias. 

Q.3 What technique is useful for avoiding overfitting in computer vision?

The regularization technique in machine learning is ideal for avoiding overfitting in computer vision. By making the coefficient transition towards zero, this process can help reduce errors.

Vamshi Krishna sanga

Vamshi Krishna sanga

72 articles published

Previous Post

Dual Degree and Joint Degree: What is the Difference and Benefits?

Next Post

Top 7 Data Mining Tools Every Business Needs for Success

  • Trending
  • Latest
Thesis vs Dissertation: How to Pick

Dissertation vs Thesis: Understanding the Key Differences

August 5, 2025
Path to Data Engineer Success

How to Become a Data Engineer: Key Skills and Job Opportunities

August 8, 2025
Deep Learning: Algorithms & Use Cases

Understanding Deep Learning: From Algorithms to Applications

August 5, 2025
Top Accounting Careers in the US

Top Accounting Careers in the US for 2025 and Beyond

August 19, 2025
Network Your Way in Data Science

Why Data Science Networking Matters for US Online Learners

August 7, 2025
Best AI/ML Certs for US Pros

Top AI and ML Certifications to Boost Your Career in the US

August 7, 2025

Get Free Consultation

upgradlogo-1.png

Building Careers of Tomorrow

Get the Android App
apple [#173]Created with Sketch. Get the iOS App
Upgrad
  • About
  • Careers
  • Blog
  • Success Stories
  • Online Power Learning
  • For Business
  • upGrad Institute
Support
  • Contact
  • Terms & Conditions
  • Privacy Policy
  • Referral Policy
Browse Courses by Region
  • Courses in Singapore
  • Courses in the UAE
  • Courses in the US
  • Courses in Canada
  • Courses in Australia
  • Courses in Saudi Arabia
  • Courses in the UK
  • Courses in Vietnam
Popular Posts
  • Top Accounting Careers in the US for 2025 and Beyond
  • Why Data Science Networking Matters for US Online Learners
  • Top AI and ML Certifications to Boost Your Career in the US
  • Salaries for Accountants in the US in 2025: What You Can Expect at Different Career Levels
  • Your 2025 Guide to Becoming a Cloud Developer in the US

KEEP UPSKILLING WITH UPGRAD

Ushering the Era of Learning and Innovation
Back in 2015, upGrad’s founders noticed that the future of work demands industry professionals to upskill continuously – not just for their organization’s benefit but also for their personal growth. Earlier, learning would come to a halt as soon as professionals entered the workspace. upGrad brought along novel approaches towards imparting and receiving education by offering people a chance to upskill while working. We have always strived to facilitate quality education to the upcoming workforce through industry-relevant UG and PG programs.

Staying Dynamic and Forward-Looking
From being incepted in 2015 to teaching a learner base of 10k+ in 2018 to crossing the 1M mark in 2020 – upGrad has always focused on staying dynamic and future-centric. This approach has helped us grow as an organization while catering best-in-class learning to our students. In 2021, upGrad became a unicorn with a valuation of $1.2B, expanding to North America, Europe, the Middle East, and the Asia Pacific. Only onwards and upwards from here!

Growing and Expanding Constantly
Growth has been our true constant in this journey. Whether it is entering the unicorn club or winning the Best Career Planning platform award, or being ranked the #1 startup in India per LinkedIn’s 2020 report – we’ve always strived to go above and beyond our current capacities and bring novel ideas to the table for the betterment of learners across the globe. Join us in this revolution and help us impact more lives!

© 2015-2025 upGrad Education Private Limited. All rights reserved  

No Result
View All Result
  • Data Science & Analytics
  • Machine Learning & AI
  • Doctorate of Business Administration
  • MBA
  • More
    • Product and Project Management
    • Digital Marketing
    • Management
    • Coding & Blockchain
    • General
    • Account & Finance