Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Aprenda Fundamentals of Image Processing | Introduction to Computer Vision
Computer Vision Course Outline
course content

Conteúdo do Curso

Computer Vision Course Outline

Computer Vision Course Outline

1. Introduction to Computer Vision
2. Image Processing with OpenCV
3. Convolutional Neural Networks

book
Fundamentals of Image Processing

Color Models

Computers store and display images using pixels, which are tiny squares that make up a picture. Each pixel holds color information, and when you put millions of them together, you get a clear image. The way colors are represented depends on different color models:

Grayscale – Instead of color, this model uses different shades of gray (from 0 to 255), from white to black. It’s often used in black-and-white photography or medical imaging.

RGB (Red, Green, Blue) – The most common model, used in screens and cameras. It combines different levels (from 0 to 255) of red, green, and blue light to create all possible colors.

HSV (Hue, Saturation, Value) – A model that represents color in a way that’s closer to how humans see it. It breaks colors down into their type (hue, from 0˚ to 360˚ ), intensity (saturation, from 0% to 100%), and brightness (value, from 0% to 100%).

Vector vs. Raster Images

When working with images, it's important to understand the two main types: raster images and vector images. Each has its own way of storing visual data and is used for different purposes.

Raster Images (Pixel-Based) Raster images are made up of tiny squares called pixels, arranged in a grid. Each pixel has a color value, and together, they form the complete image. Raster images are commonly used in photography and digital displays because they accurately capture details and colors.

Common Formats: JPEG, PNG, BMP, TIFF

Pros: rich detail and color depth

Cons: lose quality when resized (pixelation)

Vector Images (Mathematical Shapes) Vector images, on the other hand, are not made of pixels but mathematical equations defining lines, curves, and shapes. Because of this, they can be resized infinitely without losing quality. These images are ideal for logos, icons, and illustrations.

Common Formats: SVG, EPS, PDF

Pros: scalable without losing clarity

Cons: not suitable for detailed photos

Each format serves a different purpose, whether it’s saving space, preserving quality, or supporting special effects like transparency. Understanding how images are stored and represented helps in choosing the right format for any task.

1. Fill the blanks

2. Which of the following statements correctly describe the difference between vector and raster images?

question-icon

Fill the blanks

The color model is commonly used in digital cameras, screens, and image display systems. The color model represents colors in a way that is more aligned with human perception.

Clique ou arraste solte itens e preencha os espaços

Which of the following statements correctly describe the difference between vector and raster images?

Which of the following statements correctly describe the difference between vector and raster images?

Selecione algumas respostas corretas

Tudo estava claro?

Como podemos melhorá-lo?

Obrigado pelo seu feedback!

Seção 1. Capítulo 2
We're sorry to hear that something went wrong. What happened?
some-alt