image annotation business
image annotation business

In the rise of robotics, computer vision and image processing cameras, image annotation comes as the first step to get the right AI training data for Deep Learning models. Whether you build an app to allow users to snap fashion items at the store as a new omni-channel sales or use machine vision installed at edge device at the industrial facility to monitor anomalies: it starts with training massive image data sets.

The current markets estimates $1.6 B

          Billion + dollar industry includes the essential four

What is the best Image Annotation Package for your needs? 

Image data sets 
for training, testing and  validation of ML model
 
 
                    Workforce
teams, annotators or labeling service providers
Image Tagging Tool
designed specifically for ML image training
 
AI Data Management 
to manage the training process and AI pipelines
Bounding Box Computer Vision , Image Bounding Box

Typical Journey in AI Data training:

The image annotation projects usually start (after getting imagery for AI training) with finding outsourced annotating team. Expecting that  annotators are well-trained for the task itself, with good foundation in understanding data and AI flows.

But defining specific project requirements, labels, and domain knowledge require training, instructions, monitoring. In the course of ML model training, these instructions, labels, class structure, and layers of attributes may change.

Finally,  the annotating team can start. Now, you need an image annotation tool. There are plenty of these, typically used in DIY (“Do it Yourself”) environments, and are open-source

However, imagine hiring turkers or freelancers as crowdsourced team? Data management comes as a next challenge: *deploying web or desktop tools for the team, *distributing images, *project management and roles , *collecting results, * quality control.

Finally, the training of ML starts.  What happens with testing, validation, active learning pipelines as the project scales?

Image Annotation Packages

Outsourcing labour

Image annotation tools

End to End platforms

API for data training

How: Thanks to exponential growth, the former BPO centers turned AI-human labs. Employees use custom tools provided by companies.

Target: Companies  accustomed to BPO standards and shared services.

Advantage: Scale and adaptive managed dedicated team; large volume of practice in outsourcing

Example: Cloud Factory

How: Manual or AI-augmented tools. The first part of any image sample gets manually annotated, augmenting the rest with AI. Manual annotation tools are used for more unique training sets.

Target: Small companies and start-ups. DIY (Do it Yourself).

Advantage: Typically used in training AI with small image data sets, in-house.

Example: Supervisely

How: Combining both: labeling service and tools. Enables ML process optimization with data management pipeline.

Target:  Larger companies, growth stage start ups.

Advantage: Platform approach allowing companies to set requirements, monitor results, upload instructions, provide real-time feedback, change labels, change volumes.

Example: Labelbox and Taqadam.

How: Customer is involved significantly less in image annotation process. The label structure, or industries are standard.

Target: Large autonomous driving companies with standard output results. 

Advantage: Turnkey project. 

Example: Scale

New vision with the launch of TaQadam Platform

  • End to End Platform: optional labeling, tools, data management
  • Active Pipeline and Management: real-time feedback to annotating team
  • API for active learning ML, systematic upload of images and monitoring results
  • Use of pre-trained models and Semi-automated annotation