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Publications

Publications by CRIIS

2022

Sustainability Prize 1 Green Endoscopy to reduce CO2e generated by endoscopic waste - the GECO(2e) interventional study

Authors
Neves, JAC; Roseira, J; Queiros, P; de Sousa, HT; Pellino, G; Cunha, M;

Publication
BRITISH JOURNAL OF SURGERY

Abstract
Abstract Aims Endoscopy is healthcare's third-largest waste-generating procedure. This study aimed to measure a single unit's waste carbon footprint and to perform a pioneer evaluation applying the principles of green endoscopy towards a more sustainable unit. Methods This was a 3-stage, prospective study. Stage 1: 4-week observational audit, during which daily endoscopic waste (landfill, biohazard) was weighed. Stage 2: 1-week intervention with presentation of retrieved data and education of the team towards waste handling. Recycling bins were placed in endoscopy rooms, and landfill and biohazard bins were relocated. Stage 3: 4-week post-interventional period, during which daily endoscopic waste was weighed. An engineer-calibrated scale was used. Equivalence of 1kg of landfill waste to 1kg carbon dioxide equivalent (CO2e) and 1kg of biohazard waste to 3kgCO2e was applied. Paired samples T-tests were used for comparisons before and after the intervention. The opinion of the staff was collected. Results Total waste and biohazard waste were diminished by 12.2% (p=0.166) and 41.4% (p=0.010), respectively, whereas landfill waste (p=0.059) and recycling waste increased (paper: p=0.001; plastic: p=0.007). In terms of CO2e, a total decrease of 31.6% (138.8kgCO2e) was found (mean kgCO2e 109.7 vs 74.9, pre- vs post-intervention, p=0.018). Mean endoscopy load was similar (46.2 vs 44.5, p=0.275). The endoscopy unit may achieve an estimated annual reduction of 1665.6kgCO2e. The personnel agreed “the project did not disturb daily work”. Conclusions In this interventional study applying green endoscopy principles to a real-world scenario, biohazard waste reduction and daily recycling were achieved, without compromising endoscopy productivity.

2021

Particle filter refinement based on clustering procedures for high-dimensional localization and mapping systems

Authors
Aguiar, AS; dos Santos, FN; Sobreira, H; Cunha, JB; Sousa, AJ;

Publication
ROBOTICS AND AUTONOMOUS SYSTEMS

Abstract
Developing safe autonomous robotic applications for outdoor agricultural environments is a research field that still presents many challenges. Simultaneous Localization and Mapping can be crucial to endow the robot to localize itself with accuracy and, consequently, perform tasks such as crop monitoring and harvesting autonomously. In these environments, the robotic localization and mapping systems usually benefit from the high density of visual features. When using filter-based solutions to localize the robot, such an environment usually uses a high number of particles to perform accurately. These two facts can lead to computationally expensive localization algorithms that are intended to perform in real-time. This work proposes a refinement step to a standard high-dimensional filter based localization solution through the novelty of downsampling the filter using an online clustering algorithm and applying a scan-match procedure to each cluster. Thus, this approach allows scan matchers without high computational cost, even in high dimensional filters. Experiments using real data in an agricultural environment show that this approach improves the Particle Filter performance estimating the robot pose. Additionally, results show that this approach can build a precise 3D reconstruction of agricultural environments using visual scans, i.e., 3D scans with RGB information.

2021

Open hardware and software robotics competition for additional engagement in ece students - the robot@factory lite case study

Authors
Pinto, VH; Sousa, A; Lima, J; Gonçalves, J; Costa, P;

Publication
Lecture Notes in Electrical Engineering

Abstract
Throughout this paper, a competition created to enable an inter-connection between the academic and industrial paradigms is presented, using Open Hardware and Software. This competition is called Robot at Factory Lite and serves as a case study as an additional enrollment for students to apply knowledge in the fields of programming, perception, motion planning, task planning, autonomous robotic, among others. © The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerland AG 2021.

2021

Bringing Semantics to the Vineyard: An Approach on Deep Learning-Based Vine Trunk Detection

Authors
Aguiar, AS; Monteiro, NN; dos Santos, FN; Pires, EJS; Silva, D; Sousa, AJ; Boaventura Cunha, J;

Publication
AGRICULTURE-BASEL

Abstract
The development of robotic solutions in unstructured environments brings several challenges, mainly in developing safe and reliable navigation solutions. Agricultural environments are particularly unstructured and, therefore, challenging to the implementation of robotics. An example of this is the mountain vineyards, built-in steep slope hills, which are characterized by satellite signal blockage, terrain irregularities, harsh ground inclinations, and others. All of these factors impose the implementation of precise and reliable navigation algorithms, so that robots can operate safely. This work proposes the detection of semantic natural landmarks that are to be used in Simultaneous Localization and Mapping algorithms. Thus, Deep Learning models were trained and deployed to detect vine trunks. As significant contributions, we made available a novel vine trunk dataset, called VineSet, which was constituted by more than 9000 images and respective annotations for each trunk. VineSet was used to train state-of-the-art Single Shot Multibox Detector models. Additionally, we deployed these models in an Edge-AI fashion and achieve high frame rate execution. Finally, an assisted annotation tool was proposed to make the process of dataset building easier and improve models incrementally. The experiments show that our trained models can detect trunks with an Average Precision up to 84.16% and our assisted annotation tool facilitates the annotation process, even in other areas of agriculture, such as orchards and forests. Additional experiments were performed, where the impact of the amount of training data and the comparison between using Transfer Learning and training from scratch were evaluated. In these cases, some theoretical assumptions were verified.

2021

Design and Comparison of Image Hashing Methods: A Case Study on Cork Stopper Unique Identification

Authors
Fitas, R; Rocha, B; Costa, V; Sousa, A;

Publication
JOURNAL OF IMAGING

Abstract
Cork stoppers were shown to have unique characteristics that allow their use for authentication purposes in an anti-counterfeiting effort. This authentication process relies on the comparison between a user's cork image and all registered cork images in the database of genuine items. With the growth of the database, this one-to-many comparison method becomes lengthier and therefore usefulness decreases. To tackle this problem, the present work designs and compares hashing-assisted image matching methods that can be used in cork stopper authentication. The analyzed approaches are the discrete cosine transform, wavelet transform, Radon transform, and other methods such as difference hash and average hash. The most successful approach uses a 1024-bit hash length and difference hash method providing a 98% accuracy rate. By transforming the image matching into a hash matching problem, the approach presented becomes almost 40 times faster when compared to the literature.

2021

Measuring Canopy Geometric Structure Using Optical Sensors Mounted on Terrestrial Vehicles: A Case Study in Vineyards

Authors
da Silva, DQ; Aguiar, AS; dos Santos, FN; Sousa, AJ; Rabino, D; Biddoccu, M; Bagagiolo, G; Delmastro, M;

Publication
AGRICULTURE-BASEL

Abstract
Smart and precision agriculture concepts require that the farmer measures all relevant variables in a continuous way and processes this information in order to build better prescription maps and to predict crop yield. These maps feed machinery with variable rate technology to apply the correct amount of products in the right time and place, to improve farm profitability. One of the most relevant information to estimate the farm yield is the Leaf Area Index. Traditionally, this index can be obtained from manual measurements or from aerial imagery: the former is time consuming and the latter requires the use of drones or aerial services. This work presents an optical sensing-based hardware module that can be attached to existing autonomous or guided terrestrial vehicles. During the normal operation, the module collects periodic geo-referenced monocular images and laser data. With that data a suggested processing pipeline, based on open-source software and composed by Structure from Motion, Multi-View Stereo and point cloud registration stages, can extract Leaf Area Index and other crop-related features. Additionally, in this work, a benchmark of software tools is made. The hardware module and pipeline were validated considering real data acquired in two vineyards-Portugal and Italy. A dataset with sensory data collected by the module was made publicly available. Results demonstrated that: the system provides reliable and precise data on the surrounding environment and the pipeline is capable of computing volume and occupancy area from the acquired data.

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