FocusTrack: A Self-Adaptive Local Sampling Algorithm for Efficient Anti-UAV Tracking
- URL: http://arxiv.org/abs/2504.13604v1
- Date: Fri, 18 Apr 2025 10:18:07 GMT
- Title: FocusTrack: A Self-Adaptive Local Sampling Algorithm for Efficient Anti-UAV Tracking
- Authors: Ying Wang, Tingfa Xu, Jianan Li,
- Abstract summary: FocusTrack is a novel framework that dynamically refines the search region and strengthens feature representations.<n>FocusTrack surpasses global-based trackers, requiring only 30G MACs and achieving 143 fps with FocusTrack (SRA) and 44 fps with the full version.
- Score: 17.97806906260278
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anti-UAV tracking poses significant challenges, including small target sizes, abrupt camera motion, and cluttered infrared backgrounds. Existing tracking paradigms can be broadly categorized into global- and local-based methods. Global-based trackers, such as SiamDT, achieve high accuracy by scanning the entire field of view but suffer from excessive computational overhead, limiting real-world deployment. In contrast, local-based methods, including OSTrack and ROMTrack, efficiently restrict the search region but struggle when targets undergo significant displacements due to abrupt camera motion. Through preliminary experiments, it is evident that a local tracker, when paired with adaptive search region adjustment, can significantly enhance tracking accuracy, narrowing the gap between local and global trackers. To address this challenge, we propose FocusTrack, a novel framework that dynamically refines the search region and strengthens feature representations, achieving an optimal balance between computational efficiency and tracking accuracy. Specifically, our Search Region Adjustment (SRA) strategy estimates the target presence probability and adaptively adjusts the field of view, ensuring the target remains within focus. Furthermore, to counteract feature degradation caused by varying search regions, the Attention-to-Mask (ATM) module is proposed. This module integrates hierarchical information, enriching the target representations with fine-grained details. Experimental results demonstrate that FocusTrack achieves state-of-the-art performance, obtaining 67.7% AUC on AntiUAV and 62.8% AUC on AntiUAV410, outperforming the baseline tracker by 8.5% and 9.1% AUC, respectively. In terms of efficiency, FocusTrack surpasses global-based trackers, requiring only 30G MACs and achieving 143 fps with FocusTrack (SRA) and 44 fps with the full version, both enabling real-time tracking.
Related papers
- Improving trajectory continuity in drone-based crowd monitoring using a set of minimal-cost techniques and deep discriminative correlation filters [0.0]
Drone-based crowd monitoring is the key technology for applications in surveillance, public safety, and event management.
Traditional detection-assignment tracking methods struggle with false positives, false negatives, and frequent identity switches.
This paper introduces a point-oriented online tracking algorithm that improves trajectory continuity and counting reliability.
arXiv Detail & Related papers (2025-04-28T20:07:42Z) - A Cross-Scene Benchmark for Open-World Drone Active Tracking [54.235808061746525]
Drone Visual Active Tracking aims to autonomously follow a target object by controlling the motion system based on visual observations.<n>We propose a unified cross-scene cross-domain benchmark for open-world drone active tracking called DAT.<n>We also propose a reinforcement learning-based drone tracking method called R-VAT.
arXiv Detail & Related papers (2024-12-01T09:37:46Z) - DenseTrack: Drone-based Crowd Tracking via Density-aware Motion-appearance Synergy [33.57923199717605]
Drone-based crowd tracking faces difficulties in accurately identifying and monitoring objects from an aerial perspective.
To address these challenges, we present the Density-aware Tracking (DenseTrack) framework.
DenseTrack capitalizes on crowd counting to precisely determine object locations, blending visual and motion cues to improve the tracking of small-scale objects.
arXiv Detail & Related papers (2024-07-24T13:39:07Z) - RTracker: Recoverable Tracking via PN Tree Structured Memory [71.05904715104411]
We propose a recoverable tracking framework, RTracker, that uses a tree-structured memory to dynamically associate a tracker and a detector to enable self-recovery.
Specifically, we propose a Positive-Negative Tree-structured memory to chronologically store and maintain positive and negative target samples.
Our core idea is to use the support samples of positive and negative target categories to establish a relative distance-based criterion for a reliable assessment of target loss.
arXiv Detail & Related papers (2024-03-28T08:54:40Z) - Exploring Dynamic Transformer for Efficient Object Tracking [58.120191254379854]
We propose DyTrack, a dynamic transformer framework for efficient tracking.
DyTrack automatically learns to configure proper reasoning routes for various inputs, gaining better utilization of the available computational budget.
Experiments on multiple benchmarks demonstrate that DyTrack achieves promising speed-precision trade-offs with only a single model.
arXiv Detail & Related papers (2024-03-26T12:31:58Z) - SRRT: Exploring Search Region Regulation for Visual Object Tracking [58.68120400180216]
We propose a novel tracking paradigm, called Search Region Regulation Tracking (SRRT)
SRRT applies a proposed search region regulator to estimate an optimal search region dynamically for each frame.
On the large-scale LaSOT benchmark, SRRT improves SiamRPN++ and TransT with absolute gains of 4.6% and 3.1% in terms of AUC.
arXiv Detail & Related papers (2022-07-10T11:18:26Z) - Tracking by Joint Local and Global Search: A Target-aware Attention
based Approach [63.50045332644818]
We propose a novel target-aware attention mechanism (termed TANet) to conduct joint local and global search for robust tracking.
Specifically, we extract the features of target object patch and continuous video frames, then we track and feed them into a decoder network to generate target-aware global attention maps.
In the tracking procedure, we integrate the target-aware attention with multiple trackers by exploring candidate search regions for robust tracking.
arXiv Detail & Related papers (2021-06-09T06:54:15Z) - Learning Target Candidate Association to Keep Track of What Not to Track [100.80610986625693]
We propose to keep track of distractor objects in order to continue tracking the target.
To tackle the problem of lacking ground-truth correspondences between distractor objects in visual tracking, we propose a training strategy that combines partial annotations with self-supervision.
Our tracker sets a new state-of-the-art on six benchmarks, achieving an AUC score of 67.2% on LaSOT and a +6.1% absolute gain on the OxUvA long-term dataset.
arXiv Detail & Related papers (2021-03-30T17:58:02Z) - All-Day Object Tracking for Unmanned Aerial Vehicle [19.10142725484355]
This work proposes a novel correlation filter based tracker with illumination adaptive and anti dark capability, namely ADTrack.
ADTrack exploits image illuminance information to enable adaptability of the model to the given light condition.
This work also constructed one UAV nighttime tracking benchmark UAVDark135, comprising of more than 125k manually annotated frames.
arXiv Detail & Related papers (2021-01-21T05:12:37Z)
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.