Chasing the Intruder: A Reinforcement Learning Approach for Tracking
Intruder Drones
- URL: http://arxiv.org/abs/2309.05070v1
- Date: Sun, 10 Sep 2023 16:31:40 GMT
- Title: Chasing the Intruder: A Reinforcement Learning Approach for Tracking
Intruder Drones
- Authors: Shivam Kainth, Subham Sahoo, Rajtilak Pal, Shashi Shekhar Jha
- Abstract summary: We propose a reinforcement learning based approach for identifying and tracking any intruder drone using a chaser drone.
Our proposed solution uses computer vision techniques interleaved with the policy learning framework of reinforcement learning.
The results show that the reinforcement learning based policy converges to identify and track the intruder drone.
- Score: 0.08192907805418582
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Drones are becoming versatile in a myriad of applications. This has led to
the use of drones for spying and intruding into the restricted or private air
spaces. Such foul use of drone technology is dangerous for the safety and
security of many critical infrastructures. In addition, due to the varied
low-cost design and agility of the drones, it is a challenging task to identify
and track them using the conventional radar systems. In this paper, we propose
a reinforcement learning based approach for identifying and tracking any
intruder drone using a chaser drone. Our proposed solution uses computer vision
techniques interleaved with the policy learning framework of reinforcement
learning to learn a control policy for chasing the intruder drone. The whole
system has been implemented using ROS and Gazebo along with the Ardupilot based
flight controller. The results show that the reinforcement learning based
policy converges to identify and track the intruder drone. Further, the learnt
policy is robust with respect to the change in speed or orientation of the
intruder drone.
Related papers
- Obfuscated Location Disclosure for Remote ID Enabled Drones [57.66235862432006]
We propose Obfuscated Location disclOsure for RID-enabled drones (OLO-RID)
Instead of disclosing the actual drone's location, drones equipped with OLO-RID disclose a differentially private obfuscated location in a mobile scenario.
OLO-RID also extends RID messages with encrypted location information, accessible only by authorized entities.
arXiv Detail & Related papers (2024-07-19T12:35:49Z) - Drone-type-Set: Drone types detection benchmark for drone detection and tracking [0.6294091730968154]
In this paper, we provide a dataset of various drones as well as a comparison of recognized object detection models.
The experimental results of different models are provided along with a description of each method.
arXiv Detail & Related papers (2024-05-16T18:56:46Z) - Exploring Jamming and Hijacking Attacks for Micro Aerial Drones [14.970216072065861]
The Crazyflie ecosystem is one of the most popular Micro Aerial Drones and has the potential to be deployed worldwide.
In this paper, we empirically investigate two interference attacks against the Crazy Real Time Protocol (CRTP) implemented within the Crazyflie drones.
Our experimental results demonstrate the effectiveness of such attacks in both autonomous and non-autonomous flight modes.
arXiv Detail & Related papers (2024-03-06T17:09:27Z) - Sound-based drone fault classification using multitask learning [7.726132010393797]
This paper proposes a sound-based deep neural network (DNN) fault classifier and drone sound dataset.
The dataset was constructed by collecting the operating sounds of drones from microphones mounted on three different drones in an anechoic chamber.
Using the acquired dataset, we train a classifier, 1DCNN-ResNet, that classifies the types of mechanical faults and their locations from short-time input waveforms.
arXiv Detail & Related papers (2023-04-23T17:55:40Z) - Unauthorized Drone Detection: Experiments and Prototypes [0.8294692832460543]
We present a novel encryption-based drone detection scheme that uses a two-stage verification of the drone's received signal strength indicator ( RSSI) and the encryption key generated from the drone's position coordinates.
arXiv Detail & Related papers (2022-12-02T20:43:29Z) - Learning Deep Sensorimotor Policies for Vision-based Autonomous Drone
Racing [52.50284630866713]
Existing systems often require hand-engineered components for state estimation, planning, and control.
This paper tackles the vision-based autonomous-drone-racing problem by learning deep sensorimotor policies.
arXiv Detail & Related papers (2022-10-26T19:03:17Z) - TransVisDrone: Spatio-Temporal Transformer for Vision-based
Drone-to-Drone Detection in Aerial Videos [57.92385818430939]
Drone-to-drone detection using visual feed has crucial applications, such as detecting drone collisions, detecting drone attacks, or coordinating flight with other drones.
Existing methods are computationally costly, follow non-end-to-end optimization, and have complex multi-stage pipelines, making them less suitable for real-time deployment on edge devices.
We propose a simple yet effective framework, itTransVisDrone, that provides an end-to-end solution with higher computational efficiency.
arXiv Detail & Related papers (2022-10-16T03:05:13Z) - A dataset for multi-sensor drone detection [67.75999072448555]
The use of small and remotely controlled unmanned aerial vehicles (UAVs) has increased in recent years.
Most studies on drone detection fail to specify the type of acquisition device, the drone type, the detection range, or the dataset.
We contribute with an annotated multi-sensor database for drone detection that includes infrared and visible videos and audio files.
arXiv Detail & Related papers (2021-11-02T20:52:03Z) - Dogfight: Detecting Drones from Drones Videos [58.158988162743825]
This paper attempts to address the problem of drones detection from other flying drones variations.
The erratic movement of the source and target drones, small size, arbitrary shape, large intensity, and occlusion make this problem quite challenging.
To handle this, instead of using region-proposal based methods, we propose to use a two-stage segmentation-based approach.
arXiv Detail & Related papers (2021-03-31T17:43:31Z) - Learn by Observation: Imitation Learning for Drone Patrolling from
Videos of A Human Navigator [22.06785798356346]
We propose to let the drone learn patrolling in the air by observing and imitating how a human navigator does it on the ground.
The observation process enables the automatic collection and annotation of data using inter-frame geometric consistency.
A newly designed neural network is trained based on the annotated data to predict appropriate directions and translations.
arXiv Detail & Related papers (2020-08-30T15:20:40Z) - AlphaPilot: Autonomous Drone Racing [47.205375478625776]
The system has successfully been deployed at the first autonomous drone racing world championship: the 2019 AlphaPilot Challenge.
The proposed system has been demonstrated to successfully guide the drone through tight race courses reaching speeds up to 8m/s.
arXiv Detail & Related papers (2020-05-26T15:45:05Z)
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.