Detecting collision-course targets in aerial scenes from purely passive optical images is challenging for a vision-based sense-and-avoid (SAA) system. Proposed herein is a processing pipeline for detecting and evaluating collision course targets from airborne imagery using machine vision techniques. The evaluation of eight feature detectors and three spatio-temporal visual cues is presented. Performance metrics for comparing feature detectors include the percentage of detected targets (PDT), percentage of false positives (POT) and the range at earliest detection (R det Rdet). Contrast and motion-based visual cues are evaluated against standard models and expected spatio-temporal behavior. The analysis is conducted on a multi-year database o...
This thesis explores the problem of detecting an aircraft on a mid-air collision course encounter wi...
This paper proposes an original approach for visual-based obstacle detection and tracking, and confl...
This paper presents a customized detection and tracking algorithm for vision-based non cooperative U...
This research is investigating the feasibility of using computer vision to provide a level of situat...
Automated airborne collision-detection systems are a key enabling technology for facilitat- ing the ...
This paper focuses on a vision-based detection and tracking algorithm for UAS non cooperative collis...
This research is investigating the feasibility of using computer vision to provide robust sensing ca...
The emerging global market for unmanned aerial vehicle (UAV) services is anticipated to reach USD 58...
Vision-based aircraft detection technology may provide a credible sensing option for automated detec...
Machine vision represents a particularly attractive solution for sensing and detecting potential col...
This paper presents a preliminary flight test based detection range versus false alarm performance c...
The commercial use of unmanned aerial vehicles (UAVs) would be enhanced by an ability to sense and a...
This paper presents a study of near collision course engagements between a Cessna 172R aircraft and ...
A customized detection and tracking algorithm for vision-based non cooperative UAS sense and avoid a...
Recent proliferation of small Unmanned Aerial Systems (sUAS) applications requires onboard collision...
This thesis explores the problem of detecting an aircraft on a mid-air collision course encounter wi...
This paper proposes an original approach for visual-based obstacle detection and tracking, and confl...
This paper presents a customized detection and tracking algorithm for vision-based non cooperative U...
This research is investigating the feasibility of using computer vision to provide a level of situat...
Automated airborne collision-detection systems are a key enabling technology for facilitat- ing the ...
This paper focuses on a vision-based detection and tracking algorithm for UAS non cooperative collis...
This research is investigating the feasibility of using computer vision to provide robust sensing ca...
The emerging global market for unmanned aerial vehicle (UAV) services is anticipated to reach USD 58...
Vision-based aircraft detection technology may provide a credible sensing option for automated detec...
Machine vision represents a particularly attractive solution for sensing and detecting potential col...
This paper presents a preliminary flight test based detection range versus false alarm performance c...
The commercial use of unmanned aerial vehicles (UAVs) would be enhanced by an ability to sense and a...
This paper presents a study of near collision course engagements between a Cessna 172R aircraft and ...
A customized detection and tracking algorithm for vision-based non cooperative UAS sense and avoid a...
Recent proliferation of small Unmanned Aerial Systems (sUAS) applications requires onboard collision...
This thesis explores the problem of detecting an aircraft on a mid-air collision course encounter wi...
This paper proposes an original approach for visual-based obstacle detection and tracking, and confl...
This paper presents a customized detection and tracking algorithm for vision-based non cooperative U...