Semantic Segmentation Services

Label Each Pixel to Get an In-depth Understanding of the Image

Get in Touch →
Semantic Segmentation
5+

Years on the market

1000+

Successfully implemented projects

1000+

Independent Annotators

24/7

Support Availability

90%

hold BS, MS, or PhD in Math/Computer Science

Semantic Segmentation Services for Machine Learning

Classify images with pixel-wise annotation for computer vision to categorize each pixel in an image into a class or object.

Self-Driving

Self-Driving

It assists self-driving cars in seeing the world and reacting to things on the go. Through semantic segmentation visuals are divided into categories which include lanes on the road, other vehicles, road intersections, etc. It assists the car to safely navigate to arrive at its destination and also, take key measures like responding to unexpected occurrences which includes a pedestrian suddenly crossing the road or car braking all of a sudden.

Agriculture

Farmers use this technique for detecting crop infestations and automatic spraying of pesticides. It tells the farmer regarding the parts of the field that are infected and prone to risk so that the automated system is able to take action to get rid of the pest. The use of satellite imagery and drone recordings enables monitoring of urbanization and deforestation through image segmentation deep learning which assists in gathering precise information about these fields.

Agriculture
Photography

Photography

This technique is used quite often for enabling cameras to shift from portrait to landscape mode, adding or removing a filter for creating an affect. Social media apps like Instagram and TikTok utilize this technique for identifying cars, buildings, cattles, and other objects for selected filters or effects to be applied.

Medical diagnostics

Common medical procedures including CT scans, X rays, MRIs are reliant on image analysis. Though this task has previously been in the hands of a medical professional, currently medical image segmentation models are attaining similar results. The analysis of image and surrounding the image with exact boundaries, this method assists in detecting anomalies and possible diagnoses.

Medical diagnostics

Processes in Semantic Segmentation

Semantic segmentation is based on a deep learning architecture called image segmentation convolutional neural network (CNN) which is built for image segmentation. Given below is a brief synopsis of its working (from preparation to output).

Pre-processing Images

Prior to the starting of the segmentation process, images are pre-processed to ensure they are made suitable for analysis. To ensure the input is consistent and optimal, the images are resized, noise is reduced, and color is normalized.

Feature Extraction

The next step involves passing the pre-processed images via a neural network for extracting the pertinent features that are necessary for the the particular use case. The images are analyzed and distinct patterns, shapes and textures are identified to differentiate different objects or regions.

Classification

This phase starts after the extraction of relevant features. It involves classifying every pixel and assigning a label or class. It enables machine learning models to distinguish between various objects.

Output Visualization

Visualization of semantic segmentation results involves overlaying a segmentation mask to the image, highlighting a particular class or object of interest to assist in distinguishing the identified objects from the remaining image.

FAQs

Semantic segmentation involves three key steps:-

Classification – This involves classifying a particular object in an image

Localization – This involves searching the object and drawing a bounding box around it.

Segmentation - This involves bundling the pixels in a localized image by creation of a segmentation mask.

In essence, semantic segmentation involves classification of a particular class of image and isolating it from the remaining image classes by overlaying it with a segmentation mask.

Semantic segmentation involves organizing data within images and videos into distinct categories. While image classification and object detection might inform us regarding the presence and location of particular objects, segmentation permits one to dive deeper in real time.

Why Outsource to LabelForge?

You can rely on us to deliver top-tier text annotation services. Here’s why our clients trust us:

Unmatched Accuracy

Unmatched Accuracy

Get the best-in-class quality services with highest accuracy level delivering an excellence in image annotation through multiple stages of auditing and reviewing of labeled data.

Robust Data Security

Robust Data Security

As a SOC 2 TYPE 1 certified company, we prioritize data privacy and security, safeguarding your sensitive information with industry-leading practices.

Fully Scalable Solutions

Fully Scalable Solutions

Our extensive workforce is ready to meet your needs, offering a scalable image annotation service that adapts to varying project demands and quick turnaround times.

Cost-effective Pricing

Cost-effective Pricing

Outsource your image annotation to us and benefit from competitive pricing that minimizes project costs while delivering exceptional efficiency and quality.

Get in Touch with us

Vietnam Office Vietnam Office

102 Tran Phu, Mo Lao, Ha Dong, Ha Noi

Give Us A Call Give Us A Call

+84 812-436-211

Get An Online Meeting Get An Online Meeting

with our Enterprise Specialist

Let Us Know Your Needs
(*) all the fields need to be filled.