Custom Vision is an AI-powered image recognition service that allows users to easily build, deploy, and improve custom image classification and object detection models.
https://customvision.ai/
Custom Vision

Product Information

Updated:12/11/2024

What is Custom Vision

Custom Vision is a cognitive service provided by Microsoft Azure that enables developers and businesses to create their own specialized computer vision models without requiring deep expertise in machine learning or computer vision. It allows users to train models to recognize specific content in imagery by simply uploading and labeling a few images. The service uses advanced machine learning algorithms to analyze the visual characteristics of images and learn to identify custom objects, classes, or attributes.

Key Features of Custom Vision

Custom Vision is a cloud-based AI service from Microsoft that allows users to build, deploy, and improve custom image classification and object detection models. It provides an easy-to-use interface for uploading and tagging images, training models, and exporting them for use in various applications. The service uses machine learning algorithms to analyze images and can be used with small datasets to quickly prototype and iterate on computer vision models.
Easy image labeling: Upload images and quickly add tags or bounding boxes through an intuitive interface.
Rapid model training: Train custom models using machine learning with just a small set of labeled images.
Model export: Export trained models to run offline on various platforms and edge devices.
REST API integration: Use simple API calls to make predictions with trained models in applications.
Iterative improvement: Continuously improve model accuracy by adding images and retraining.

Use Cases of Custom Vision

Manufacturing quality control: Detect defects or classify product types on assembly lines.
Retail inventory management: Identify and count products on store shelves using images.
Content moderation: Automatically flag inappropriate images in user-generated content.
Agriculture crop monitoring: Identify plant species or detect crop diseases from aerial imagery.
Logo detection in marketing: Track brand logo appearances in social media or advertising imagery.

Pros

Easy to use with no machine learning expertise required
Quick to prototype with small datasets
Flexible deployment options including cloud and edge

Cons

May have limitations for very complex vision tasks
Requires Azure subscription for full functionality
Performance depends on quality and variety of training data

How to Use Custom Vision

Create a Custom Vision project: Go to https://customvision.ai and sign in with your Microsoft account. Create a new project, selecting the appropriate project type (classification or object detection) and domain.
Upload and tag images: Upload a set of training images to your project. For classification, add tags to each image. For object detection, draw bounding boxes around objects and label them.
Train the model: Click the Train button to train your custom vision model on the uploaded and tagged images. Custom Vision will use machine learning to create a model based on your data.
Evaluate model performance: Review the model's performance metrics like precision and recall. Test the model by uploading new images to see how well it predicts.
Improve the model: Add more training images, especially for tags/objects that performed poorly. Retrain the model to improve its accuracy.
Publish the model: When satisfied with the model's performance, publish it to get a prediction endpoint that can be called via REST API.
Use the model: Integrate the published model into your application by making API calls to the prediction endpoint to classify new images or detect objects.

Custom Vision FAQs

Custom Vision is an Azure AI service that allows you to build, deploy and improve custom image classification and object detection models using a simple web UI or API. It enables you to train models to recognize specific content in imagery without needing extensive machine learning expertise.

Analytics of Custom Vision Website

Custom Vision Traffic & Rankings
6.2K
Monthly Visits
#3080942
Global Rank
#32416
Category Rank
Traffic Trends: Jun 2024-Oct 2024
Custom Vision User Insights
00:04:08
Avg. Visit DTabsNavuration
3.13
Pages Per Visit
39.46%
User Bounce Rate
Top Regions of Custom Vision
  1. DK: 32.8%

  2. US: 21.21%

  3. IN: 16.56%

  4. TH: 6.86%

  5. JP: 5.91%

  6. Others: 16.66%

Latest AI Tools Similar to Custom Vision

altcheckerai
altcheckerai
AltCheckerAI is an AI-powered tool that automatically optimizes image alt text to improve website SEO and accessibility through intelligent recommendations.
IMG Processing
IMG Processing
IMG Processing is a powerful API service that enables fast and reliable image processing capabilities including uploading, transforming, and watermarking through simple integration.
ImageKit.io
ImageKit.io
ImageKit.io is a comprehensive media management and delivery platform that provides real-time image and video optimization, processing APIs, and Digital Asset Management (DAM) solutions for delivering high-quality visual experiences on websites and apps.
FLORA
FLORA
FLORA is an innovative AI-powered creative tool that combines multiple AI capabilities on an infinite canvas to enable personalized plant identification, creative design, and interactive botanical assistance.

Popular AI Tools Like Custom Vision

WatermarkRemover.io
WatermarkRemover.io
WatermarkRemover.io is an AI-powered online tool that automatically removes watermarks from images for free while maintaining image quality.
Lenso.ai
Lenso.ai
Lenso.ai is an AI-powered reverse image search tool that allows users to search for places, people, duplicates, and related images across billions of web images.
Dewatermark.ai
Dewatermark.ai
Dewatermark.ai is a free AI-powered tool that automatically detects and removes watermarks from images while maintaining image quality.
Pl@ntNet
Pl@ntNet
Pl@ntNet is a citizen science project and mobile app that allows users to identify plants from photos using AI and contribute to plant biodiversity research.