Bridging the Gap between Deep Learning and Probabilistic Inference for Advancements in Robotics

A special issue of Electronics (ISSN 2079-9292). This special issue belongs to the section "Systems & Control Engineering".

Deadline for manuscript submissions: 15 May 2024 | Viewed by 445

Special Issue Editors

School of Computer Science, The University of Sydney, Sydney, NSW 2006, Australia
Interests: machine learning; robot learning; motion planning; multi-agent systems; probabilistic inference

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Guest Editor
School of Computing, University of Portsmouth, Portsmouth PO1 3HE, UK
Interests: machine learning; pattern recognition; robotics
Special Issues, Collections and Topics in MDPI journals

Special Issue Information

Dear Colleagues,

In recent times, the field of robotics has witnessed remarkable advancements propelled by the integration of artificial intelligence (AI) and machine learning (ML), particularly deep learning, into robotic systems. These developments have propelled robots to accomplish tasks with unprecedented levels of performance. This has spurred a reconsideration of the traditional probabilistic inference algorithms that have long been relied upon for reliable operation in uncertain and unstructured environments. These probabilistic techniques offer a comprehensive framework that unifies perception, control, and learning in robotics.

Concurrently, the paradigm of robot learning has gained significant momentum. It holds the promise of enabling robots to generalize their capabilities across a spectrum of scenarios, mitigating the necessity for the meticulous engineering of task-specific models, which is a hallmark of classic probabilistic methods. Yet, a fundamental question persists: can we entrust robots with dependable and adaptive behaviors solely through data-driven learning approaches?

Addressing this question lies at the heart of this Special Issue: Bridging the Gap between Deep Learning and Probabilistic Inference in Robotics. As the robotics landscape evolves, there is a growing recognition that extracting the best elements from both deep learning and probabilistic inference could hold the key to unlocking new levels of robotic performance.

This Special Issue serves as a platform to delve into this juncture where robotics, deep learning, and probabilistic inference converge. It aims to foster dialogue among researchers who are navigating the complexities of merging these diverse methodologies. By uniting experts from these distinct fields, this issue aims to push the boundaries of what is possible in intelligent robotics.

Key Objectives and Themes:

  • Learned Components in Probabilistic Contexts: A recent breakthrough in this domain has been the introduction of learned components within probabilistic frameworks. This issue seeks to explore the potential of such integration to enhance system adaptability.
  • Unpacking Epistemic Uncertainty: Epistemic uncertainty, often referred to as model uncertainty, encapsulates what we do not know about the underlying data distribution. It arises when the available data are insufficient to fully characterize the intricacies of the environment. In the context of robot learning, this uncertainty could manifest as gaps in the training data, variations in sensor measurements, or unmodeled dynamics of the robot and its surroundings.
  • End-to-End Differentiable Algorithms: The emergence of end-to-end differentiable algorithms is a significant milestone. This issue will delve into the implications of these algorithms on robust and reliable learning systems.
  • Bayesian inference for Probabilistic Reasoning: Recent advancements have propelled Bayesian inference to new heights within the field of robotics. This paves the way for seamlessly integrating learning and reasoning, potentially bridging the gap between the adaptability of deep learning and the robustness of probabilistic reasoning.
  • Adaptability for Robust Control: Adaptability in an integrated robotic system is often the most crucial factor to ensure robustness, even in the mist of uncertainty. The ultimate goal is to cultivate robotic learning systems that not only learn from data but also adapt to novel situations effectively.
  • Learning to Plan and Planning to Learn: The integration of robot learning and planning is a two-way street. On the one hand, robots can utilize data-driven insights to make more informed decisions and optimize action sequences. On the other hand, planning can be employed to facilitate the learning process. Robots can devise deliberate actions to gather informative data, thereby accelerating the learning curve and refining their understanding of the environment.

Dr. Tin Lai
Prof. Dr. Zhaojie Ju
Guest Editors

Manuscript Submission Information

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Keywords

  • robot learning
  • deep learning in robotics
  • probabilistic robotics

Published Papers (1 paper)

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22 pages, 6193 KiB  
Article
Lightweight UAV Object-Detection Method Based on Efficient Multidimensional Global Feature Adaptive Fusion and Knowledge Distillation
by Jian Sun, Hongwei Gao, Zhiwen Yan, Xiangjing Qi, Jiahui Yu and Zhaojie Ju
Electronics 2024, 13(8), 1558; https://doi.org/10.3390/electronics13081558 - 19 Apr 2024
Viewed by 298
Abstract
Unmanned aerial vehicles (UAVs) equipped with remote-sensing object-detection devices are increasingly employed across diverse domains. However, the detection of small, densely-packed objects against complex backgrounds and at various scales presents a formidable challenge to conventional detection algorithms, exacerbated by the computational constraints of [...] Read more.
Unmanned aerial vehicles (UAVs) equipped with remote-sensing object-detection devices are increasingly employed across diverse domains. However, the detection of small, densely-packed objects against complex backgrounds and at various scales presents a formidable challenge to conventional detection algorithms, exacerbated by the computational constraints of UAV-embedded systems that necessitate a delicate balance between detection speed and accuracy. To address these issues, this paper proposes the Efficient Multidimensional Global Feature Adaptive Fusion Network (MGFAFNET), an innovative detection method for UAV platforms. The novelties of our approach are threefold: Firstly, we introduce the Dual-Branch Multidimensional Aggregation Backbone Network (DBMA), an efficient architectural innovation that captures multidimensional global spatial interactions, significantly enhancing feature distinguishability for complex and occluded targets. Simultaneously, it reduces the computational burden typically associated with processing high-resolution imagery. Secondly, we construct the Dynamic Spatial Perception Feature Fusion Network (DSPF), which is tailored specifically to accommodate the notable scale variances encountered during UAV operation. By implementing a multi-layer dynamic spatial fusion coupled with feature-refinement modules, the network adeptly minimizes informational redundancy, leading to more efficient feature representation. Finally, our novel Localized Compensation Dual-Mask Distillation (LCDD) strategy is devised to adeptly translate the rich local and global features from the higher-capacity teacher network to the more resource-constrained student network, capturing both low-level spatial details and high-level semantic cues with unprecedented efficacy. The practicability and superior performance of our MGFAFNET are corroborated by a dedicated UAV detection platform, showcasing remarkable improvements over state-of-the-art object-detection methods, as demonstrated by rigorous evaluations conducted using the VisDrone2021 benchmark and a meticulously assembled proprietary dataset. Full article
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