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Efficient RGB-T Tracking via Mutual Prompt Learning and Knowledge Distillation


מושגי ליבה
Efficient RGB-T tracking achieved through mutual prompt learning and knowledge distillation.
תקציר

The content discusses the transition from a two-stream to a one-stream RGB-T tracking architecture. It introduces a novel approach based on cross-modal mutual prompt learning, leading to improved precision rates and faster inference speeds. The article highlights challenges in RGB-T tracking, model architectures, data synthesis issues, and the proposed solution of a one-stream architecture guided by a teacher model. Extensive experiments demonstrate the effectiveness of the proposed method compared to existing RGB-T trackers.

Abstract:

  • Focus on efficient RGB-T tracking.
  • Novel approach based on mutual prompt learning.
  • Improved precision rates and faster inference speeds.

Introduction:

  • Importance of thermal infrared imaging in object tracking.
  • Evolution from anchor-based to Transformer-based solutions.
  • Challenges in RGB-T tracking addressed by new architectures.

Method:

  • Design of teacher model for feature extraction and fusion.
  • Multi-modal mutual prompter for adaptive modality identification.
  • Hierarchical knowledge distillation for student model training.

Experiments:

  • Evaluation on public datasets GTOT, RGBT234, LasHeR, VTUAV-ST, VTUAV-LT.
  • Comparison with state-of-the-art methods showcasing superior performance.
  • Attribute-based evaluation demonstrating effectiveness under challenging conditions.
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סטטיסטיקה
"Method Backbone Pub GTOT 92.6 77.5 RGBT234 88.3 66.1 LasHeR 71.4 56.7"
ציטוטים
"Our designed teacher model achieved the highest precision rate." "The student model realized an inference speed more than three times faster than the teacher model."

תובנות מפתח מזוקקות מ:

by Yang Luo,Xiq... ב- arxiv.org 03-26-2024

https://arxiv.org/pdf/2403.16834.pdf
From Two Stream to One Stream

שאלות מעמיקות

How does the proposed method address challenges related to insufficient multi-modal data?

The proposed method addresses the challenge of insufficient multi-modal data in RGB-T tracking by first training a high-performing two-stream teacher model. This teacher model is designed to learn and extract complementary modality information effectively. Subsequently, this learned knowledge is rapidly transferred to a one-stream student model through knowledge distillation techniques. By distilling the knowledge from the teacher model to the student model, the student can benefit from the insights and information gathered by the teacher without requiring an extensive amount of labeled data for training. This approach overcomes the issue of limited RGB-T tracking datasets and allows for efficient learning even with constrained data availability.

How can hierarchical distillation impact transferring knowledge between models?

Hierarchical distillation plays a crucial role in transferring knowledge between models, particularly in scenarios where there is a need to transfer complex structures or relationships learned by a larger, more sophisticated model (teacher) to a smaller, more streamlined model (student). In this context, hierarchical distillation involves guiding the student model to mimic not only intermediate features but also response distributions generated by the teacher model during inference. By incorporating feature-based distillation and response-based distillation strategies into training, hierarchical distillation ensures that essential information and patterns are effectively passed down from the teacher to the student. This results in improved performance and generalization capabilities for the student while maintaining efficiency.

How can this research impact real-world applications beyond traditional object tracking scenarios?

This research on efficient RGB-T tracking via mutual prompt learning and knowledge distillation has significant implications for various real-world applications beyond traditional object tracking scenarios: Surveillance Systems: The enhanced precision rate and real-time capability of RGB-T trackers developed through this research can improve surveillance systems' accuracy in detecting objects across different lighting conditions. Autonomous Vehicles: Implementing advanced RGB-T tracking methods can enhance object detection capabilities for autonomous vehicles operating in diverse environments. Search & Rescue Operations: Improved fusion of visible light images with thermal infrared images can aid search & rescue operations by providing better visibility under challenging conditions like fog or darkness. Medical Imaging: The concept of modality fusion explored in this research could be applied to medical imaging tasks involving multiple modalities such as MRI scans combined with other imaging techniques. Environmental Monitoring: Utilizing efficient RGB-T trackers could enhance environmental monitoring efforts by enabling better detection and analysis of objects or anomalies across different modalities. These advancements have broad-reaching implications across industries where accurate object detection, classification, and localization are critical components of various applications beyond traditional object tracking domains.
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