Model-Agnostic Open-Set Air-to-Air Visual Object Detection for Reliable UAV Perception
- URL: http://arxiv.org/abs/2509.09297v1
- Date: Thu, 11 Sep 2025 09:40:06 GMT
- Title: Model-Agnostic Open-Set Air-to-Air Visual Object Detection for Reliable UAV Perception
- Authors: Spyridon Loukovitis, Anastasios Arsenos, Vasileios Karampinis, Athanasios Voulodimos,
- Abstract summary: Traditional closed-set detectors degrade significantly under domain shifts and flight data corruption.<n>We propose a novel, model-agnostic open-set detection framework designed specifically for embedding-based detectors.
- Score: 7.300229659237879
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Open-set detection is crucial for robust UAV autonomy in air-to-air object detection under real-world conditions. Traditional closed-set detectors degrade significantly under domain shifts and flight data corruption, posing risks to safety-critical applications. We propose a novel, model-agnostic open-set detection framework designed specifically for embedding-based detectors. The method explicitly handles unknown object rejection while maintaining robustness against corrupted flight data. It estimates semantic uncertainty via entropy modeling in the embedding space and incorporates spectral normalization and temperature scaling to enhance open-set discrimination. We validate our approach on the challenging AOT aerial benchmark and through extensive real-world flight tests. Comprehensive ablation studies demonstrate consistent improvements over baseline methods, achieving up to a 10\% relative AUROC gain compared to standard YOLO-based detectors. Additionally, we show that background rejection further strengthens robustness without compromising detection accuracy, making our solution particularly well-suited for reliable UAV perception in dynamic air-to-air environments.
Related papers
- Diffuse to Detect: A Generalizable Framework for Anomaly Detection with Diffusion Models Applications to UAVs and Beyond [2.4449457537548036]
Anomaly detection in complex, high-dimensional data, such as UAV sensor readings, is essential for operational safety.<n>We propose the Diffuse to Detect (DTD) framework, a novel approach that adapts diffusion models for anomaly detection.<n>DTD employs a single-step diffusion process to predict noise patterns, enabling rapid and precise identification of anomalies without reconstruction errors.
arXiv Detail & Related papers (2025-10-27T02:08:08Z) - Source-Free Object Detection with Detection Transformer [59.33653163035064]
Source-Free Object Detection (SFOD) enables knowledge transfer from a source domain to an unsupervised target domain for object detection without access to source data.<n>Most existing SFOD approaches are either confined to conventional object detection (OD) models like Faster R-CNN or designed as general solutions without tailored adaptations for novel OD architectures, especially Detection Transformer (DETR)<n>In this paper, we introduce Feature Reweighting ANd Contrastive Learning NetworK (FRANCK), a novel SFOD framework specifically designed to perform query-centric feature enhancement for DETRs.
arXiv Detail & Related papers (2025-10-13T07:35:04Z) - Uncertainty-Aware Post-Detection Framework for Enhanced Fire and Smoke Detection in Compact Deep Learning Models [0.0]
Existing vision-based methods face challenges in balancing efficiency and reliability.<n>Deep learning models such as YOLOv5n and YOLOv8n are widely adopted for deployment on UAVs, CCTV systems, and IoT devices.<n>We propose an uncertainty aware post-detection framework that rescales detection confidences using both statistical uncertainty and domain relevant visual cues.
arXiv Detail & Related papers (2025-10-11T08:36:57Z) - On the Adversarial Robustness of Learning-based Conformal Novelty Detection [10.58528988397402]
We study the adversarial robustness of conformal novelty detection using AdaDetect.<n>Our results show that adversarial perturbations can significantly increase the FDR while maintaining high detection power.
arXiv Detail & Related papers (2025-10-01T03:29:11Z) - Robust Distribution Alignment for Industrial Anomaly Detection under Distribution Shift [51.24522135151649]
Anomaly detection plays a crucial role in quality control for industrial applications.<n>Existing methods attempt to address domain shifts by training generalizable models.<n>Our proposed method demonstrates superior results compared with state-of-the-art anomaly detection and domain adaptation methods.
arXiv Detail & Related papers (2025-03-19T05:25:52Z) - SCADE: Scalable Framework for Anomaly Detection in High-Performance System [0.0]
Command-line interfaces remain integral to high-performance computing environments.<n>Traditional security solutions struggle to detect anomalies due to their context-specific nature, lack of labeled data, and the prevalence of sophisticated attacks like Living-off-the-Land (LOL)<n>We introduce the Scalable Command-Line Anomaly Detection Engine (SCADE), a framework that combines global statistical models with local context-specific analysis for unsupervised anomaly detection.
arXiv Detail & Related papers (2024-12-05T15:39:13Z) - Generative Edge Detection with Stable Diffusion [52.870631376660924]
Edge detection is typically viewed as a pixel-level classification problem mainly addressed by discriminative methods.
We propose a novel approach, named Generative Edge Detector (GED), by fully utilizing the potential of the pre-trained stable diffusion model.
We conduct extensive experiments on multiple datasets and achieve competitive performance.
arXiv Detail & Related papers (2024-10-04T01:52:23Z) - Trustworthy Intrusion Detection: Confidence Estimation Using Latent Space [7.115540429006041]
This work introduces a novel method for enhancing confidence in anomaly detection in Intrusion Detection Systems (IDS)
By developing a confidence metric derived from latent space representations, we aim to improve the reliability of IDS predictions against cyberattacks.
Applying to the NSL-KDD dataset, our approach focuses on binary classification tasks to effectively distinguish between normal and malicious network activities.
arXiv Detail & Related papers (2024-09-19T08:09:44Z) - Open-Set Deepfake Detection: A Parameter-Efficient Adaptation Method with Forgery Style Mixture [81.93945602120453]
We introduce an approach that is both general and parameter-efficient for face forgery detection.<n>We design a forgery-style mixture formulation that augments the diversity of forgery source domains.<n>We show that the designed model achieves state-of-the-art generalizability with significantly reduced trainable parameters.
arXiv Detail & Related papers (2024-08-23T01:53:36Z) - Federated Learning with Anomaly Detection via Gradient and Reconstruction Analysis [2.28438857884398]
We introduce a novel framework that synergizes gradient-based analysis with autoencoder-driven data reconstruction to detect and mitigate poisoned data with unprecedented precision.
Our method outperforms existing solutions by 15% in anomaly detection accuracy while maintaining a minimal false positive rate.
Our work paves the way for future advancements in distributed learning security.
arXiv Detail & Related papers (2024-03-15T03:54:45Z) - Diffusion-Based Particle-DETR for BEV Perception [94.88305708174796]
Bird-Eye-View (BEV) is one of the most widely-used scene representations for visual perception in Autonomous Vehicles (AVs)
Recent diffusion-based methods offer a promising approach to uncertainty modeling for visual perception but fail to effectively detect small objects in the large coverage of the BEV.
Here, we address this problem by combining the diffusion paradigm with current state-of-the-art 3D object detectors in BEV.
arXiv Detail & Related papers (2023-12-18T09:52:14Z) - Efficient Real-time Smoke Filtration with 3D LiDAR for Search and Rescue
with Autonomous Heterogeneous Robotic Systems [56.838297900091426]
Smoke and dust affect the performance of any mobile robotic platform due to their reliance on onboard perception systems.
This paper proposes a novel modular computation filtration pipeline based on intensity and spatial information.
arXiv Detail & Related papers (2023-08-14T16:48:57Z) - Anomaly Detection for Unmanned Aerial Vehicle Sensor Data Using a
Stacked Recurrent Autoencoder Method with Dynamic Thresholding [0.3441021278275805]
This paper proposes a system incorporating a Long Short-Term Memory (LSTM) Deep Learning Autoencoder based method with a novel dynamic thresholding algorithm and weighted loss function for anomaly detection of a UAV dataset.
The dynamic thresholding and weighted loss functions showed promising improvements to the standard static thresholding method, both in accuracy-related performance metrics and in speed of true fault detection.
arXiv Detail & Related papers (2022-03-09T14:16:14Z) - DAE : Discriminatory Auto-Encoder for multivariate time-series anomaly
detection in air transportation [68.8204255655161]
We propose a novel anomaly detection model called Discriminatory Auto-Encoder (DAE)
It uses the baseline of a regular LSTM-based auto-encoder but with several decoders, each getting data of a specific flight phase.
Results show that the DAE achieves better results in both accuracy and speed of detection.
arXiv Detail & Related papers (2021-09-08T14:07:55Z) - Channel Boosting Feature Ensemble for Radar-based Object Detection [6.810856082577402]
Radar-based object detection is explored provides a counterpart sensor modality to be deployed and used in adverse weather conditions.
The proposed method's efficacy is extensively evaluated using the COCO evaluation metric.
arXiv Detail & Related papers (2021-01-10T12:20:58Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.