21 - 25 April 2024
National Harbor, Maryland, US
Conference 13039 > Paper 13039-9
Paper 13039-9

Utilizing grounded SAM for self-supervised frugal camouflaged human detection

On demand | Presented live 22 April 2024

Abstract

Visually detecting camouflaged objects is a hard problem for both humans and computer vision algorithms. Strong similarities between object and background appearance make the task significantly more challenging than traditional object detection or segmentation tasks. Current state-of-the-art models use either convolutional neural networks or vision transformers as feature extractors. They are trained in a fully supervised manner and thus need a large amount of labeled training data. In this paper, both self-supervised and frugal learning methods are introduced to the task of Camouflaged Object Detection (COD). The overall goal is to fine-tune two COD reference methods, namely SINet-V2 and HitNet, pre-trained for camouflaged animal detection to the task of camouflaged human detection. Therefore, we use the public dataset CPD1K that contains camouflaged humans in a forest environment. We create a strong baseline using supervised frugal transfer learning for the fine-tuning task. Then, we analyze three pseudo-labeling approaches to perform the fine-tuning task in a self-supervised manner. Our experiments show that we achieve similar performance by pure self-supervision compared to fully supervised frugal learning.

Presenter

Alexander Wolpert
HENSOLDT Optronics GmbH (Germany)
Alexander Wolpert received his master's degree in computer science from the Karlsruhe Institute of Technology (KIT) in 2020. Since 2020, he has been with Hensoldt Optronics, Oberkochen, Germany as an R&D scientist. His research interests include object detection, object tracking, and image enhancement for visual surveillance applications.
Application tracks: AI/ML
Author
HENSOLDT Optronics GmbH (Germany), Hochschule Aalen - Technik und Wirtschaft (Germany)
Presenter/Author
Alexander Wolpert
HENSOLDT Optronics GmbH (Germany)
Author
Hochschule Aalen - Technik und Wirtschaft (Germany)
Author
HENSOLDT Optronics GmbH (Germany)