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Nigel Lee Email & Phone Number

Electrical engineer specializing in clear thinking for complex problems in adaptive array processing, statistical signal processing, machine learning, computer vision, and human perception at Draper
Location: Brookline, Massachusetts, United States 7 work roles 2 schools
1 work email found @draper.com 3 phones found area 617 and 978 LinkedIn matched
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Contact Signals · 1 work email · 3 phones

Work email n****@draper.com
Direct phone (617) ***-****
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Current company
Role
Electrical engineer specializing in clear thinking for complex problems in adaptive array processing, statistical signal processing, machine learning, computer vision, and human perception
Location
Brookline, Massachusetts, United States

Who is Nigel Lee? Overview

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Quick answer

Nigel Lee is listed as Electrical engineer specializing in clear thinking for complex problems in adaptive array processing, statistical signal processing, machine learning, computer vision, and human perception at Draper, based in Brookline, Massachusetts, United States. AeroLeads shows a work email signal at draper.com, phone signal with area code 617, 978, and a matched LinkedIn profile for Nigel Lee.

Nigel Lee previously worked as Principal Scientist and Group Leader (Machine Intelligence Group) at Draper and Principal Scientist (Machine Intelligence Group) at Draper. Nigel Lee holds Doctor Of Philosophy - Phd, Electrical Engineering from Princeton University.

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Email format at Draper

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{first_initial}{last}@draper.com
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Profile bio

About Nigel Lee

Diversity of experience, consistency of excellence. In a nutshell, that would describe my 25+ year career in electrical engineering.At MIT Lincoln Laboratory, I gained expertise in adaptive array processing applied to passive sonar processing. My work helped to advance the state of the art in passive sonar detection and estimation, by increasing the robustness of adaptive algorithms toward mismatch and source motion.At EuclidIQ, I charted the company's technical direction to develop video compression algorithms that optimize human perceptual quality. I spearheaded the company's effort to develop a credible subjective test methodology to validate our claimed 20% compression gains over industry benchmarks. At Corista, I focused on improving medical image classification, executing multiple machine learning techniques, including deep convolutional neural networks (CNNs) and feature-based classifiers. My research pointed the company toward a particular deep CNN implementation that achieved 90% classification accuracy, a 20% improvement over previous results.At STR, I returned to defense applications, including sonar and radar. However, I also established myself as one of STR’s machine learning experts, applying deep CNNs to improve sonar and radar image classification and generative adversarial networks to increase the realism of synthetic data.In my current position at Draper, I continue to apply my machine learning expertise in multiple projects, for example designing a framework to evaluate and improve 8+ machine learning algorithms for demographic inference with multimodal data, achieving 15% classification improvement. I have done extensive technical writing over the course of my career, authoring successful papers, patents, and proposals. I enjoy simplifying complex technical concepts for general audiences and explaining both their significance and their potential. Over my career, I have found that the while the goals and challenges of any given field may be different, all fields benefit from critical thinking, consistent and clear evaluation of performance, and creativity built on solid, fundamental understanding of theory. Those are the qualities I have brought in achieving a standard of excellence at each of my positions. The diversity of my experience enables me to cull ideas and techniques from seemingly disparate fields and apply them in novel ways.I'm always looking to grow my personal and professional network. Feel free to connect via LinkedIn or contact me directly at nigel92@gmail.com.

Listed skills include Matlab, Computer Vision, Algorithms, Statistical Signal Processing, and 15 others.

Current workplace

Nigel Lee's current company

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Draper
Draper
Electrical engineer specializing in clear thinking for complex problems in adaptive array processing, statistical signal processing, machine learning, computer vision, and human perception
AeroLeads page
7 roles

Nigel Lee work experience

A career timeline built from the work history available for this profile.

Principal Scientist And Group Leader (Machine Intelligence Group)

Current

Cambridge, MA, US

  • Directing team of ten to develop novel methods to detect hypersonic vehicles via atmospheric disturbances
  • Coordinating team of four to design machine learning and deep learning classifiers to draw inferences about subject mental states based on time-varying sensor data
  • Implemented 8+ machine learning and deep learning classifiers to predict sensor failure from other sensor data
  • As group leader, staffing group members with fulfilling projects and supporting group members to excel in their work and advance their careers
May 2023 - Present

Principal Scientist (Machine Intelligence Group)

Cambridge, MA, US

  • Directed team of four to generate realistic, high-resolution synthetic lunar image data using generative adversarial networks (GANs)
  • Designed framework to evaluate and optimize 8+ machine learning algorithms for demographic inference with multimodal data, achieving 15% classification improvement
  • Developed correlation-based methodology (with machine learning extensions) to classify various electronic devices, even when not powered, using their RF signal responses
  • Coauthored 6+ reports summarizing state-of-the-art machine learning techniques for various defense applications including UAVs, navigation, data fusion, and electronic warfare.
Jan 2022 - May 2023

Principal Scientist (Machine Learning, Sonar Signal Processing)

Str

Woburn, MA, US

  • Coordinated team of five to improve sonar image classification accuracy by 20% using deep learning convolutional neural network (CNN) architectures
  • Produced realistic simulations of sonar data (convincing to human subjects within 5% of measured data in subjective testing) using generative adversarial networks (GANs)
  • Increased realism of synthetic data using domain adaptation (via GANs), resulting in better training of deep CNNs and 15% improvement in radar image classification accuracy
  • Strengthened 5+ successful technical proposals in sonar and radar signal processing and machine learning with contributions as both primary author and co-author
  • Promoted machine learning collaboration across five groups as committee member of Machine Learning Working Group
Mar 2019 - Oct 2021

Chief Algorithmic Officer (Digital Pathology)

  • Executed 10+ machine learning techniques for medical image classification, including deep CNNs and feature-based classifiers, resulting in 20% improvement
  • Facilitated 5+ surveys of state of the art R&D in machine learning, deep learning, and classification for digital pathology and documented results
  • Communicated company progress, including 90% classification accuracy, in 5+ presentations to industry conferences and to potential and existing customers
Dec 2016 - Feb 2019

Chief Science Officer (Video Compression)

Cambridge, MA, US

  • Charted company’s technical direction to develop video compression algorithms that optimize perceptual quality, resulting in 20% improvement over industry benchmarks
  • Spearheaded company’s effort to develop credible subjective test methodology for measuring 20% compression gains and wrote white paper about methodology
  • Supervised company’s R&D team of between five and 14 people to turn proof-of-concept video compression algorithms into tangible prototypes
  • Authored five patents as primary writer, with clear and concise technical writing, and responded to patent office actions to facilitate granting of patents
Jun 2007 - Feb 2019

Technical Staff (Adaptive Array Processing)

Lexington, MA, US

  • Advanced state of the art in passive and active sonar detection and estimation in shallow water environments via adaptive signal processing techniques, with 20% improvement
  • Enhanced adaptive beamforming robustness in the presence of source motion by 25%, with innovative algorithms in rank reduction and derivative-based updating
  • Publicized R&D progress in 5+ conference talks and 20+ sponsor presentations
Aug 1998 - May 2007

Electrical Engineer (Active Sonar Signal Processing)

Newport, RI, US

  • Expanded capabilities for adaptive time-frequency detection of active sonar signals in shallow water environments
  • Conceived effective adaptive subspace interference rejection methods to reduce reverberation from active sonar signals by 25%
Dec 1994 - Jul 1998
2 education records

Nigel Lee education

Doctor Of Philosophy - Phd, Electrical Engineering

Princeton University

Bachelor Of Science - Bs, Electrical Engineering

Brown University
FAQ

Frequently asked questions about Nigel Lee

Quick answers generated from the profile data available on this page.

What company does Nigel Lee work for?

Nigel Lee works for Draper.

What is Nigel Lee's role at Draper?

Nigel Lee is listed as Electrical engineer specializing in clear thinking for complex problems in adaptive array processing, statistical signal processing, machine learning, computer vision, and human perception at Draper.

What is Nigel Lee's email address?

AeroLeads has found 1 work email signal at @draper.com for Nigel Lee at Draper.

What is Nigel Lee's phone number?

AeroLeads has found 3 phone signal(s) with area code 617, 978 for Nigel Lee at Draper.

Where is Nigel Lee based?

Nigel Lee is based in Brookline, Massachusetts, United States while working with Draper.

What companies has Nigel Lee worked for?

Nigel Lee has worked for Draper, Str, Corista Llc, Euclidiq, Llc, and Mit Lincoln Laboratory.

How can I contact Nigel Lee?

You can use AeroLeads to view verified contact signals for Nigel Lee at Draper, including work email, phone, and LinkedIn data when available.

What schools did Nigel Lee attend?

Nigel Lee holds Doctor Of Philosophy - Phd, Electrical Engineering from Princeton University.

What skills is Nigel Lee known for?

Nigel Lee is listed with skills including Matlab, Computer Vision, Algorithms, Statistical Signal Processing, Video Compression, Image Processing, Signal Processing, and Latex.

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