Automationscribe.com
  • Home
  • AI Scribe
  • AI Tools
  • Artificial Intelligence
  • Contact Us
No Result
View All Result
Automation Scribe
  • Home
  • AI Scribe
  • AI Tools
  • Artificial Intelligence
  • Contact Us
No Result
View All Result
Automationscribe.com
No Result
View All Result

Understanding Convolutional Neural Networks (CNNs) By way of Excel

admin by admin
November 18, 2025
in Artificial Intelligence
0
Understanding Convolutional Neural Networks (CNNs) By way of Excel
399
SHARES
2.3k
VIEWS
Share on FacebookShare on Twitter


as a black field. We all know that it learns from knowledge, however the query is how it really learns.

On this article, we are going to construct a tiny Convolutional Neural Community (CNN) immediately in Excel to know, step-by-step, how a CNN really works for pictures.

We are going to open this black field, and watch every step occur proper earlier than our eyes. We are going to perceive all of the calculations which can be the muse of what we name “deep studying”.

This text is in a sequence of articles about implementing machine studying and deep studying algorithms in Excel. And you could find all of the Excel recordsdata on this Kofi hyperlink.

1. How Pictures are Seen by Machines

1.1 Two Methods to Detect One thing in an Picture

Once we attempt to detect an object in an image, like a cat, there are two essential methods: the deterministic strategy and the machine studying strategy. Let’s see how these two approaches work for this instance of recognizing a cat in an image.

The deterministic manner means writing guidelines by hand.

For instance, we are able to say {that a} cat has a spherical face, two triangle ears, a physique, a tail, and so forth. So the developer will do all of the work to outline the foundations.

Then the pc runs all these guidelines, and provides a rating of similarity.

Deterministic strategy to detect a cat on an image — picture by creator

The machine studying strategy implies that we don’t write guidelines by ourselves.

As a substitute, we give the pc many examples, photos with cats and photos with out cats. Then it learns by itself what makes a cat a cat.

Machine studying strategy to detect a cat on an image — picture by creator (cats are generated by AI)

That’s the place issues could turn into mysterious.

We normally say that the machine will determine it out by itself, however the actual query is how.

Actually, we nonetheless have to inform the machines the right way to create these guidelines. And guidelines ought to be learnable. So the important thing level is: how can we outline the form of guidelines that might be used?

To grasp the right way to outline guidelines, we first have to know what a picture is.

1.2 Understanding What an Picture Is

A cat is advanced kind, however we are able to take a easy and clear instance: recognizing handwritten digits from the MNIST dataset.

First, what’s a picture?

A digital picture will be seen as a grid of pixels. Every pixel is a quantity that reveals how brilliant it’s, from 0 for white to 255 for black.

In Excel, we are able to characterize this grid with a desk the place every cell corresponds to 1 pixel.

MNIST Handwritten digits – picture from the MNIST dataset https://en.wikipedia.org/wiki/MNIST_database (CC BY-SA 3.0)

The unique dimension of the digits is 28 x 28. However to maintain issues easy, we are going to use a ten×10 desk. It’s sufficiently small for fast calculations however nonetheless massive sufficient to point out the final form.

So we are going to scale back the dimension.

For instance, the handwritten quantity “1” will be represented by a ten×10 grid as beneath in Excel.

Picture is a grid of numbers — picture by creator

1.3 Earlier than Deep Studying: Traditional Machine Studying for Pictures

Earlier than utilizing CNNs or any deep studying methodology, we are able to already acknowledge easy pictures with traditional machine studying algorithms comparable to logistic regression or determination bushes.

On this strategy, every pixel turns into one characteristic. For instance, a ten×10 picture has 100 pixels, so there are 100 options as enter.

The algorithm then learns to affiliate patterns of pixel values with labels comparable to “0”, “1”, or “2”.

Traditional ML for picture recognition — picture by creator

Actually with this easy machine studying strategy, logistic regression can obtain fairly good outcomes with an accuracy round 90%.

This reveals that traditional fashions are capable of be taught helpful data from uncooked pixel values.

Nevertheless, they’ve a serious limitation. They deal with every pixel as an impartial worth, with out contemplating its neighbors. Because of this, they can not perceive spatial relationships with the pixels.

So intuitively, we all know that the efficiency won’t be good for advanced pictures. So this methodology will not be scalable.

Now, for those who already understand how traditional machine studying works, you already know that there isn’t a magic. And in reality, you already know what to do: it’s a must to enhance the characteristic engineering step, it’s a must to rework the options, in an effort to get extra significant data from the pixels.

2. Constructing a CNN Step by Step in Excel

2.1 From advanced CNNs to a easy one in Excel

Once we speak about Convolutional Neural Networks, we regularly see very deep and complicated architectures, like VGG-16. Many layers, hundreds of parameters, and numerous operations, it appears very advanced, and say that it’s inconceivable to know precisely the way it works.

VGG16 structure — picture by creator

The principle thought behind the layers is: detecting patterns step-by-step.

With the instance of handwritten digits, let’s ask a query: what might be the best attainable CNN structure?

First, for the hidden layers, earlier than doing all of the layers, let’s scale back the quantity. What number of? Let’s do one. That’s proper: just one.

As for the filters, what about their dimensions? In actual CNN layers, we normally use 3×3 filters to detect small sample. However let’s start with huge ones.

How huge? 10×10!

Sure, why not?

This additionally implies that you don’t have to slip the filter throughout the picture. This fashion, we are able to immediately examine the enter picture with the filter and see how effectively they match.

This easy case will not be about efficiency, however about readability.
It can present how CNNs detect patterns step-by-step.

Now, we now have to outline the variety of filters. We are going to say 10, it’s the minimal. Why? As a result of there are 10 digits, so we now have to have a minimal of 10 filters. And we are going to see how they are often discovered within the subsequent part.

Within the picture beneath, you’ve the diagram of this easiest structure of a CNN neural community:

The only CNN structure – picture by creator

2.2 Coaching the Filters (or Designing Them Ourselves)

In an actual CNN, the filters are usually not written by hand. They’re realized throughout coaching.

The neural community adjusts the values inside every filter to detect the patterns that greatest assist to acknowledge the photographs.

In our easy Excel instance, we won’t practice the filters.

As a substitute, we are going to create them ourselves to know what they characterize.

Since we already know the shapes of handwritten digits, we are able to design filters that seem like every digit.

For instance, we are able to draw a filter that matches the type of 0, one other for 1, and so forth.

An alternative choice is to take the common picture of all examples for every digit and use that because the filter.

Every filter will then characterize the “common form” of a quantity.

That is the place the frontier between human and machine turns into seen once more. We are able to both let the machine uncover the filters, or we are able to use our personal information to construct them manually.

That’s proper: machines don’t outline the character of the operations. Machine studying researchers outline them. Machines are solely good to do loops, to search out the optimum values for these defines guidelines. And in easy instances, people are all the time higher than machines.

So, if there are solely 10 filters to outline, we all know that we are able to immediately outline the ten digits. So we all know, intuitively, the character of those filters. However there are different choices, in fact.

Now, to outline the numerical values of those filters, we are able to immediately use our information. And we can also use the coaching dataset.

Beneath you possibly can see the ten filters created by averaging all the photographs of every handwritten digit. Each reveals the standard sample that defines a quantity.

Common values as filters — picture by creator

2.3 How a CNN Detects Patterns

Now that we now have the filters, we now have to check the enter picture to those filters.

The central operation in a CNN is known as cross-correlation. It’s the key mechanism that permits the pc to match patterns in a picture.

It really works in two easy steps:

  1. Multiply values/dot product: we take every pixel within the enter picture, and we are going to multiply it by the pixel in the identical place of the filter. Which means that the filter “seems to be” at every pixel of the picture and measures how comparable it’s to the sample saved within the filter. Sure, if the 2 values are massive, then the result’s massive.
  2. Add outcomes/sum: The merchandise of those multiplications are then added collectively to provide a single quantity. This quantity expresses how strongly the enter picture matches the filter.
Instance of Cross Correlation for one image – picture by creator

In our simplified structure, the filter has the identical dimension because the enter picture (10×10).

Due to this, the filter doesn’t want to maneuver throughout the picture.
As a substitute, the cross-correlation is utilized as soon as, evaluating the entire picture with the filter immediately.

This quantity represents how effectively the picture matches the sample contained in the filter.

If the filter seems to be like the common form of a handwritten “5”, a excessive worth implies that the picture might be a “5”.

By repeating this operation with all filters, one per digit, we are able to see which sample offers the very best match.

2.4 Constructing a Easy CNN in Excel

We are able to now create a small CNN from finish to finish to see how the total course of works in observe.

  1. Enter: A ten×10 matrix represents the picture to categorise.
  2. Filters: We outline ten filters of dimension 10×10, every one representing the common picture of a handwritten digit from 0 to 9. These filters act as sample detectors for every quantity.
  3. Cross correlation: Every filter is utilized to the enter picture, producing a single rating that measures how effectively the picture matches that filter’s sample.
  4. Choice: The filter with the very best rating offers the anticipated digit. In deep studying frameworks, this step is usually dealt with by a Softmax perform, which converts all scores into chances.
    In our easy Excel model, taking the most rating is sufficient to decide which digit the picture almost certainly represents.
Each 10×10 filter represents the average shape of a handwritten digit (0–9).
The input image is compared with all filters using cross-correlation.
The filter that produces the highest score — after normalization with Softmax — corresponds to the detected digit.
Cross-correlation of the enter digit with ten common digit filters. The very best rating, normalized by Softmax, identifies the enter as “6.” – picture by creator

2.5 Convolution or Cross Correlation?

At this level, you may surprise why we name it a Convolutional Neural Community when the operation we described is definitely cross-correlation.

The distinction is refined however easy:

  • Convolution means flipping the filter each horizontally and vertically earlier than sliding it over the picture.
  • Cross-correlation means making use of the filter immediately, with out flipping.

For extra data, you possibly can learn this text:

For some historic cause, the time period Convolution stayed, whereas the operation that’s really executed in a CNN is cross-correlation.

As you possibly can see, in most deep-learning frameworks, comparable to PyTorch or TensorFlow, really use cross-correlation when performing “convolutions”.

Cross correlation and convolution — picture by creator

Briefly:

CNNs are “convolutional” in title, however “cross-correlational” in observe.

3. Constructing Extra Complicated Architectures

3.1 Small filters to detect extra detailed patterns

Within the earlier instance, we used a single 10×10 filter to check the entire picture with one sample.

This was sufficient to know the precept of cross-correlation and the way a CNN detects similarity between a picture and a filter.

Now we are able to take one step additional.

As a substitute of 1 international filter, we are going to use a number of smaller filters, every of dimension 5×5. These filters will take a look at smaller areas of the picture, detecting native particulars as a substitute of the whole form.

Let’s take an instance with 4 5×5 filters utilized to a handwritten digit.

The enter picture will be lower into 4 smaller components of 5×5 pixels for every one.

We nonetheless can use the common worth of all of the digits to start with. So every filter will give 4 values, as a substitute of 1.

Smaller filters in CNN for digits recognition – picture by creator

On the finish, we are able to apply a Softmax perform to get the ultimate prediction.

However on this easy case, it is usually attainable simply to sum all of the values.

3.2 What if the digit will not be within the heart of the picture

In my earlier examples, I examine the filters to mounted areas of the picture. And one intuitive query that we are able to ask is what if the article will not be centered. Sure, it may be at any place on a picture.

The answer is sadly very primary: you slide the filter throughout the picture.

Let’s take a easy instance once more: the dimension of the enter picture is 10×14. The peak will not be modified, and the width is 14.

So the filter continues to be 10 x 10, and it’ll slide horizontally throughout the picture. Then, we are going to get 5 cross-correlation.

We have no idea the place the picture is, however it’s not an issue as a result of we are able to simply get the max worth of the 5 the-cross correlations.

That is what we name max pooling layer.

Max pooling in a easy CNN – Picture by creator

3.3 Different Operations Utilized in CNNs

We attempt to clarify, why every element is helpful in a CNN.

An important element is the cross-correlation between the enter and the filters. And we additionally clarify that small filters will be helpful, and the way max pooling handles objects that may be anyplace in a picture.

There are additionally different steps generally utilized in CNNs, comparable to utilizing a number of layers in a row or making use of non-linear activation capabilities.

These steps make the mannequin extra versatile, extra strong, and capable of be taught richer patterns.

Why are they helpful precisely?

I’ll depart this query to you as an train.

Now that you just perceive the core thought, strive to consider how every of those steps helps a CNN go additional, and you’ll strive to consider some concrete instance in Excel.

Conclusion

Simulating a CNN in Excel is a enjoyable and sensible strategy to see how machines acknowledge pictures.

By working with small matrices and easy filters, we are able to perceive the primary steps of a CNN.

I hope this text gave you some meals for thought of what deep studying actually is. The distinction between machine studying and deep studying will not be solely about how deep the mannequin is, however about the way it works with representations of pictures and knowledge.

Tags: CNNsConvolutionalExcelNetworksNeuralUnderstanding
Previous Post

Your full information to Amazon Fast Suite at AWS re:Invent 2025

Next Post

Speed up enterprise options with agentic AI-powered consulting: Introducing AWS Skilled Service Brokers

Next Post
Speed up enterprise options with agentic AI-powered consulting: Introducing AWS Skilled Service Brokers

Speed up enterprise options with agentic AI-powered consulting: Introducing AWS Skilled Service Brokers

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Popular News

  • How Aviva constructed a scalable, safe, and dependable MLOps platform utilizing Amazon SageMaker

    How Aviva constructed a scalable, safe, and dependable MLOps platform utilizing Amazon SageMaker

    402 shares
    Share 161 Tweet 101
  • Unlocking Japanese LLMs with AWS Trainium: Innovators Showcase from the AWS LLM Growth Assist Program

    402 shares
    Share 161 Tweet 101
  • Speed up edge AI improvement with SiMa.ai Edgematic with a seamless AWS integration

    402 shares
    Share 161 Tweet 101
  • The Journey from Jupyter to Programmer: A Fast-Begin Information

    402 shares
    Share 161 Tweet 101
  • The right way to run Qwen 2.5 on AWS AI chips utilizing Hugging Face libraries

    402 shares
    Share 161 Tweet 101

About Us

Automation Scribe is your go-to site for easy-to-understand Artificial Intelligence (AI) articles. Discover insights on AI tools, AI Scribe, and more. Stay updated with the latest advancements in AI technology. Dive into the world of automation with simplified explanations and informative content. Visit us today!

Category

  • AI Scribe
  • AI Tools
  • Artificial Intelligence

Recent Posts

  • How you can Construct an Over-Engineered Retrieval System
  • Speed up enterprise options with agentic AI-powered consulting: Introducing AWS Skilled Service Brokers
  • Understanding Convolutional Neural Networks (CNNs) By way of Excel
  • Home
  • Contact Us
  • Disclaimer
  • Privacy Policy
  • Terms & Conditions

© 2024 automationscribe.com. All rights reserved.

No Result
View All Result
  • Home
  • AI Scribe
  • AI Tools
  • Artificial Intelligence
  • Contact Us

© 2024 automationscribe.com. All rights reserved.