Proceedings
Author and Organisation |
Paper Title |
Paper |
Presentation |
DOI |
Day 1 – Onboard processing applications |
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Session 1: Surveys and Mission Analysis related to On-Board Processing |
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Murray Ireland (Craft Prospect) |
Applications and Enabling Technologies for On-Board Processing and Information Extraction: Trends and Needs |
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Nicolas Longepe (ESA) |
AI4EO: from big to small architecture for deployment at the edge |
N/A |
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Session 2: Advances in On-Board Processing in Instruments and Payloads |
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Alexandre Mege (Airbus DS) |
Hyperspectral digital backend breadboarding for microwave radiometers. 183 GHz water vapour absorption band application to SAPHIR-NG sensor |
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Laura Seoane (Inta) |
An autonomous control software embedded in a custom-designed electronic architecture for ExoMars’ RLS instrument to analyze samples at Mars surface |
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David Gonzalez-Arjona (GMV) |
In-Orbit Space-Based Surveillance System by high-performance computer-vision algorithms and dedicated HW avionics |
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Claas Ziemke (DLR) |
PLATO DPS: State of the art on-board data processing for Europe’s next planet-hunter |
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Session 3: On-Board Processing Algorithms and Implementations |
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Enrico Magli (Politecnico Di Torino) |
Compressive imaging and deep learning based image reconstruction methods in the "SURPRISE" EU project |
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Domenik Helms (OFFIS - Institut für Informatik) |
A novel tool box, automating the FPGA design of an ultra-low power, low latency block-memory free implementation of a 1-dimensional stream processing CNN. |
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Gogu Dragos-Georgel (GMV) |
Boosting Autonomous Navigation solution based on Deep Learning using new rad-tol Kintex Ultrascale FPGA |
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Session 4: Autonomous Operations using On-Board Processing |
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Jakub Nalepa (KP Labs) |
Antelope: Towards on-board anomaly detection in telemetry data using deep learning |
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Luca Romanelli (Aiko S.r.l) |
Scheduling downlink operations using Reinforcement Learning |
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Day 2 – On-Board Processing Benchmarks and AI Acceleration |
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Session 5: Evaluation and Benchmarks of Processing Devices and Systems |
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Antoine Certain (Airbus DS) |
HP4S: High Performance Parallel Payload Processing for Space |
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Leonidas Kosmidis (BSC & UPC) |
GPU4S (GPUs for Space): Are we there yet? |
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David Steenari (ESA) |
OBPMark (On-Board Processing Benchmarks) – Open Source Computational Performance Benchmarks for Space Applications |
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Max Ghiglione (Airbus DS) |
Machine Learning Application Benchmark for satellite on-board data processing |
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Patricia Lopez Cueva (Thales Alenia Space) |
Evaluation of new generation rad-hard many-core architecture for satellite payload applications |
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Constantin Papadas (ISD S.A.) |
Summary of multiple benchmarks on the High Performance Data Processor (HPDP) |
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Vasileios Leon (NTUA) |
Systematic Evaluation of the European NG-LARGE FPGA & EDA Tools for On-Board Processing |
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Session 6: AI Inference Frameworks and Acceleration on Space Devices |
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Leonidas Kosmidis (BSC & UPC) |
Reliable Machine Learning Acceleration for Future Space Processors and FPGAs: LEON, NOEL-V and TASTE |
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Jason Vidmar (Xilinx) |
Space DPU: Constructing a Radiation-Tolerant, FPGA-based Platform for Deep Learning Acceleration on Space Payloads |
TBA |
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Ken O'Neill (Microchip Technology) |
Using the VectorBlox software development kit to create programmable AI/ML applications in radiation-tolerant RT PolarFire FPGAs |
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Ran Ginosar (Ramon Space) |
Ramon Space RC64-based AI/ML Inference Engine |
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Day 3 - Advances in Data Processing Devices and Equipment |
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Session 7: Developments in Devices and IPs for On-Board Processing |
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David Steenari (ESA) |
Survey of High-Performance Processors and FPGAs for On-Board Processing and Machine Learning Applications |
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Ganry Nicolas (Microchip France) |
From Commercial off-the-Shelf (COTS), Radiation-tolerant to Radiation-hardened Devices, Today’s Unique Scalable Microprocessors (MPUs) and Microcontrollers (MCUs) with associated companions’ devices benefit Space System Designs |
N/A |
TBA |
|
Olivier Notebaert (Airbus DS) |
NG-Ultra validation and on-board processing board development |
N/A |
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Thomas Guillemain (Teledyne e2v) |
“New Space” use cases permitted by Radiation Tolerant Space qualified Compute intensive processors, memories and modules solutions from Teledyne e2v |
N/A |
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Barry Kavanagh (O.C.E. Technology Ltd) |
The hisaor chip - Analysis of a new system-on-chip that combines advanced neural network and digital signal processing with multiple interfaces, radiation tolerance, and low power consumption. |
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Session 8: New Equipment for On-Board Processing |
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Anandhavel Sakthivel (Cobham Gaisler AB) |
GR740 Single Board Computer |
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Jochen Rust (DSI Aerospace Gmbh) |
High-Performance Data Processing Unit for Space Applications |
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Björn Fiethe (IDA TU Braunschweig) |
Performant and Flexible On-Board Processing Modules Using Reconfigurable FPGAs |
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Paul Bajanaru (GMV) |
Reconfigurable Co-Processor for Spacecraft Autonomous Navigation |
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Session 9: COTS Processors Hardening and Fault Tolerance Improvement |
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Alexander Pawlitzki (Thales Alenia Space) |
multiMIND – high performance processing system for robust NewSpace payloads |
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Renato Costa Amorim (Evoleo Technologies GmbH) |
Dependable MPSoC framework for mixed criticality applications |
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Manuel Peña Fernandez (Arquimea Ingenieria) |
IP to detect and diagnose errors in COTS microprocessors through the Trace Interface |
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Piotr Kuligowski (KP Labs) |
System-level hardening techniques used in the COTS-based data processing unit |
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Day 4 - On-Board Processing Architectures |
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Session 10: Advances in On-Board Processing Architectures |
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Jimmy Le Rhun (Thales Research & Technology) |
De-RISC: Launching RISC-V into space |
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Michele Caon (Politecnico Di Torino) |
Low Latency On-Board Data Handling for Earth Observation Satellites using Off-the-Shelf Components |
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Pablo Ghiglino (Klepsydra Technologies GmbH) |
Lock-free pipelining for onboard data processing - A low power and high throughput alternative to OpenMP parallelisation for processor intensive tasks. |
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Patrick Kenny (DLR) |
Parallelizing On-Board Data Analysis Applications for a Distributed Processing Architecture |
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Joaquin Espana Navarro (Cobham Gaisler AB) |
High-Performance Compute Board - A Fault-Tolerant Module for On-Boards Vision Processing |
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Gianluca Giuffrida (University Of Pisa) |
Satellite Instrument Control Unit with Artificial Intelligence engine on a Single Chip |
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Session 11: Development in Software Frameworks for On-Board Processing |
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Tobias Franz (DLR) |
Tasking Modeling Language: A toolset for model-based engineering of data-driven software systems |
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Karen Scholz (DLR) |
Model Management Service: A Custom PUS Service for Flexible Handling of Machine Learning Models on board Space Systems |
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Matthias Göbel (Embedded Brains Gmbh) |
Space qualification for Open-Source Real-Time Multicore OS RTEMS |
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Fred Feresin (Institute of Research & Technology Saint Exupery) |
In-flight results of OPS-SAT images processing, by Artificial Neural Networks, embedded on FPGA |
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Oskar Flordal (Unibap AB) |
SpaceCloud Cloud Computing and In-Orbit Demonstration |
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Samantha Wagner (Spire Global) |
On-the-ground testbed for AI/ML- assisted on-board-processing on nanosatellite platform: Brain in Space initiative |
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Francisco Membibre (Deimos Space S.L.U.) |
PIL testing of the Optical On-board Image Processing Solution for EO-ALERT |