*[CFP] Frontiers in Robotics & AI Special Issue: Machine Vision &
Intelligence for Unmanned Vehicles in the Real World
<https://www.frontiersin.org/research-topics/23189/machine-vision-and-intelligence-for-unmanned-vehicles-in-the-real-world>*

*Submission Deadlines: *
Dec. 17, 2021 -- Abstract
Mar. 25, 2022 -- Manuscript

*Special Issue link:*
https://www.frontiersin.org/research-topics/23189/machine-vision-and-intelligence-for-unmanned-vehicles-in-the-real-world

*CfP:*

In recent years, the presence of autonomous robots in the real world, for
example, self-driving cars, drones, and unmanned surface vehicles have
significantly increased. With the recent advances in machine/deep learning,
there are growing expectations that full autonomy may become a reality
shortly, and it is expected to bring fundamental changes to the societies
of robotics, computer vision, and artificial intelligence.

An autonomous system typically consists of a series of modules comprising
perception, navigation, planning, and control. The perception system is
responsible for estimating location and constructing the 3-D environment
map to plan safe navigation routes. With recent advances in machine/deep
learning, such as convolutional neural networks, autonomous robots’
perception, navigation, and planning, robots have become more intelligent
than ever before, and such systems' applications are being realized.

This Research Topic aims to present current directions in this field and
explores the problems related to machine vision and intelligence for
autonomous systems in the real world. Specifically, this Research Topic
will mainly focus on:

1. Affordable sensors for varying environmental conditions;
2. Reliable simultaneous localization and mapping;
3. Machine learning that can effectively handle varying real-world
conditions and unforeseen events;
4. Hardware and software co-design for efficient real-time performance;
5. Resilient and robust platforms that can withstand adversarial attacks
and failures;
6. End-to-end system integration of sensing, computer vision, signal/image
processing, and machine/deep learning.

In this way, relevant themes for this Research Topic include, but are not
limited to:

• 3D environment reconstruction and understanding;
• Mapping and localization for unmanned vehicles in the real world;
• Semantic/instance segmentation and semantic mapping;
• Self-supervised/unsupervised visual environment perception;
• Obstacle detection/tracking and 3D localization;
• Signage detection and recognition;
• Deep/machine learning and image analysis for intelligent environment
perception;
• Adversarial domain adaptation for autonomous systems;
• On-board embedded visual perception systems;
• Bio-inspired vision sensing for autonomous system perception;
• Real-time deep learning inference.

Keywords:

Perception, navigation, planning, unmanned vehicles, AI

*Important Note:*

All contributions to this Research Topic must be within the scope of the
section and journal to which they are submitted, as defined in their
mission statements. Frontiers reserves the right to guide an out-of-scope
manuscript to a more suitable section or journal at any stage of peer
review.


*Guest Editors:*

Rui Fan, Tongji University

Nan Li, Northwestern Polytechnical University

Mohammud J. Bocus, University of Bristol

Yuxiang Sun, Hong Kong Polytechnic University

Yue Wang, Zhejiang University


*Contact: *

Rui Fan, rui....@ieee.org
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