Fast Training Data Acquisition for Object Detection and Segmentation using Black Screen Luminance Keying
Thomas P\"ollabauer, Volker Knauthe, Andr\'e Boller, Arjan Kuijper,, Dieter Fellner

TL;DR
This paper introduces a rapid and simple luminance keying method using a black screen to acquire training data for object detection and segmentation, significantly reducing time and complexity compared to traditional techniques.
Contribution
The authors propose a luminance keying approach with black screens for fast training data collection, eliminating the need for manual annotation and complex rendering processes.
Findings
Achieves high accuracy in object detection with minimal data acquisition time.
Outperforms conventional rendering techniques without requiring 3D models.
Enables training of state-of-the-art networks within minutes.
Abstract
Deep Neural Networks (DNNs) require large amounts of annotated training data for a good performance. Often this data is generated using manual labeling (error-prone and time-consuming) or rendering (requiring geometry and material information). Both approaches make it difficult or uneconomic to apply them to many small-scale applications. A fast and straightforward approach of acquiring the necessary training data would allow the adoption of deep learning to even the smallest of applications. Chroma keying is the process of replacing a color (usually blue or green) with another background. Instead of chroma keying, we propose luminance keying for fast and straightforward training image acquisition. We deploy a black screen with high light absorption (99.99\%) to record roughly 1-minute long videos of our target objects, circumventing typical problems of chroma keying, such as color…
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Taxonomy
TopicsRobotics and Automated Systems · Infrared Target Detection Methodologies · Advanced Image and Video Retrieval Techniques
MethodsSparse Evolutionary Training
