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Publicações

Publicações por Ricardo Barbosa Sousa

2023

High-Level Teleoperation System for Autonomous Stackers

Autores
Silva, Manuel F; Rebelo, Paulo; Sousa, Ricardo; Héber Sobreira; Mendes, Abel;

Publicação

Abstract

2023

The GreenAuto 3D navigation system for mobile robots

Autores
Silva, Manuel F.; Sousa, Ricardo B.; Matos, Diogo; Rebelo, Paulo; Costa, Pedro; Caldana, Daniele; Sobreira, Heber; Mendes, Abel; Martins, Nuno;

Publicação

Abstract

2024

The GreenAuto mobile robots fleet management and scheduling system

Autores
Matos, Diogo; Costa, Pedro; Sousa, Ricardo B.; Rebelo, Paulo; Sobreira, Heber; Silva, Manuel F.; Mendes, Abel; Martins, Nuno;

Publicação

Abstract

2024

The GreenAuto autonomous solutions for intralogistics operations

Autores
Sousa, Ricardo B.; Matos, Diogo; Sobreira, Heber; Rebelo, Paulo; Caldana, Daniele; Cordeiro, Artur; De Souza, João Pedro Carvalho; Silva, Manuel F.; Costa, Pedro; Mendes, Abel; Martins, Nuno;

Publicação

Abstract

2025

IILABS 3D: iilab Indoor LiDAR-based SLAM Dataset

Autores
Ferreira Ribeiro, Jorge Diogo; Sousa, Ricardo B.; Martins, João; Aguiar, André; Baptista Neves dos Santos, Filipe; Sobreira, Héber;

Publicação

Abstract

2026

CARGO: A Mobile Manipulator Solution for Container Unloading

Autores
Lopes, MS; Cordeiro, A; Sousa, RB; Beça, JA; Costa, P; de Souza, JPC; Silva, MF;

Publicação
ICARA

Abstract
Shipping container unloading is a physically demanding task often carried out under challenging conditions, which motivates the use of automation. However, automating this process is complex due to the unpredictable sizes and quantities of each shipment. Existing solutions tend to be task-specific, rely on closed software stacks, and offer limited information on performance in non-controlled environments, which restricts their adaptability. We present CARGO, a modular pipeline that enables a mobile manipulator equipped with regular sensors and actuators to unload containers autonomously. The pipeline employs a predefined, layered workflow composed of reconfigurable modules that can be adapted to various robots, ensuring that all boxes in a stack are systematically handled. In simulation, the pipeline successfully unloaded a full container without collisions, thereby validating the complete workflow. Laboratory tests further confirmed these results, with the mobile manipulator successfully unloading boxes across multiple trials, with a success rate of 97%. These results demonstrate that a versatile mobile manipulator can handle mixed box sizes and chaotic layouts using a generic, modular pipeline, highlighting a promising direction for flexible container-unloading automation. © 2026 IEEE.

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