Types of Image Classification
Image classification is a fundamental task in computer vision that involves assigning a label or category to an image based on its visual content. Various types of image classification methods and techniques are used depending on the complexity of the task and the nature of the images. Here are the main types of image classification:
1. Binary Classification
Binary classification involves classifying images into one of two categories. For example, determining whether an image contains a cat or not. This is the simplest form of image classification.
2. Multiclass Classification
Multiclass classification involves categorizing images into more than two classes. For instance, classifying images of different types of animals (cats, dogs, birds, etc.). Each image is assigned to one, and only one, category.
3. Multilabel Classification
Multilabel classification allows an image to be associated with multiple labels. For example, an image might be classified as both “sunset” and “beach.” This type of classification is useful when images can belong to multiple categories simultaneously.
4. Hierarchical Classification
Hierarchical classification involves classifying images at multiple levels of hierarchy. For example, an image of an animal can first be classified as a “mammal” and then further classified as “cat” or “dog.” This method is useful when dealing with complex datasets with multiple levels of categories.
5. Fine-Grained Classification
Fine-grained classification focuses on distinguishing between very similar categories. For instance, classifying different species of birds or breeds of dogs. This type of classification requires high-resolution images and sophisticated models to capture subtle differences.
6. Zero-Shot Classification
Zero-shot classification involves classifying images into categories that the model has never seen before. This is achieved by leveraging semantic information about the new categories. For example, a model trained on images of animals might classify a previously unseen animal like a panda by understanding the relationship between known animals and the new category.
7. Few-Shot Classification
Few-shot classification is a technique where the model is trained to classify images with only a few examples of each category. This is useful in scenarios where obtaining a large number of labeled images is challenging.
What is Image Classification?
In today’s digital era, where visual data is abundantly generated and consumed, image classification emerges as a cornerstone of computer vision. It enables machines to interpret and categorize visual information, a task that is pivotal for numerous applications, from enhancing medical diagnostics to powering autonomous vehicles. Understanding image classification, its working mechanisms, and its applications can provide a glimpse into the vast potential of artificial intelligence (AI) in transforming our world.