Facebook PWC-Net is a deep learning model designed for optical flow estimation. It predicts the motion between consecutive video frames by analyzing pixel displacements, enabling applications such as video stabilization, motion detection, and frame interpolation.
Top 5*
Generative AI Tools
About Facebook PWC-Net
Facebook PWC-Net was developed in 2018 by researchers from Facebook AI Research (FAIR). It was created to improve the accuracy and efficiency of optical flow estimation in videos, leveraging deep learning techniques to outperform previous models in both speed and performance.
Strengths of Facebook PWC-Net include high accuracy and efficiency in optical flow estimation. Weaknesses involve potential computational intensity and the need for large datasets for training. Competitors include RAFT (Recurrent All-Pairs Field Transforms) and FlowNet2, which also focus on optical flow tasks.
Hire Facebook PWC-Net Experts
Work with Howdy to gain access to the top 1% of LatAM Talent.
Share your Needs
Talk requirements with a Howdy Expert.
Choose Talent
We'll provide a list of the best candidates.
Recruit Risk Free
No hidden fees, no upfront costs, start working within 24 hrs.
How to hire a Facebook PWC-Net expert
A Facebook PWC-Net expert must have skills in deep learning, specifically convolutional neural networks (CNNs), proficiency in Python, experience with machine learning frameworks such as TensorFlow or PyTorch, and knowledge of optical flow algorithms.
*Estimations are based on information from Glassdoor, salary.com and live Howdy data.
USA
$ 224K
Employer Cost
$ 127K
Employer Cost
$ 97K
Benefits + Taxes + Fees
Salary
The Best of the Best Optimized for Your Budget
Thanks to our Cost Calculator, you can estimate how much you're saving when hiring top LatAm talent with no middlemen or hidden fees.