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Main Authors: Del Prete, Roberto, Salvoldi, Manuel, Barretta, Domenico, Longépé, Nicolas, Meoni, Gabriele, Karnieli, Arnon, Graziano, Maria Daniela, Renga, Alfredo
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.03403
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author Del Prete, Roberto
Salvoldi, Manuel
Barretta, Domenico
Longépé, Nicolas
Meoni, Gabriele
Karnieli, Arnon
Graziano, Maria Daniela
Renga, Alfredo
author_facet Del Prete, Roberto
Salvoldi, Manuel
Barretta, Domenico
Longépé, Nicolas
Meoni, Gabriele
Karnieli, Arnon
Graziano, Maria Daniela
Renga, Alfredo
contents Satellite-based onboard data processing is crucial for time-sensitive applications requiring timely and efficient rapid response. Advances in edge artificial intelligence are shifting computational power from ground-based centers to on-orbit platforms, transforming the "sensing-communication-decision-feedback" cycle and reducing latency from acquisition to delivery. The current research presents a framework addressing the strict bandwidth, energy, and latency constraints of small satellites, focusing on maritime monitoring. The study contributes three main innovations. Firstly, it investigates the application of deep learning techniques for direct ship detection and classification from raw satellite imagery. By simplifying the onboard processing chain, our approach facilitates direct analyses without requiring computationally intensive steps such as calibration and ortho-rectification. Secondly, to address the scarcity of raw satellite data, we introduce two novel datasets, VDS2Raw and VDV2Raw, which are derived from raw data from Sentinel-2 and Vegetation and Environment Monitoring New Micro Satellite (VENuS) missions, respectively, and enriched with Automatic Identification System (AIS) records. Thirdly, we characterize the tasks' optimal single and multiple spectral band combinations through statistical and feature-based analyses validated on both datasets. In sum, we demonstrate the feasibility of the proposed method through a proof-of-concept on CubeSat-like hardware, confirming the models' potential for operational satellite-based maritime monitoring.
format Preprint
id arxiv_https___arxiv_org_abs_2411_03403
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Maritime Situational Awareness through End-to-End Onboard Raw Data Analysis
Del Prete, Roberto
Salvoldi, Manuel
Barretta, Domenico
Longépé, Nicolas
Meoni, Gabriele
Karnieli, Arnon
Graziano, Maria Daniela
Renga, Alfredo
Computer Vision and Pattern Recognition
Satellite-based onboard data processing is crucial for time-sensitive applications requiring timely and efficient rapid response. Advances in edge artificial intelligence are shifting computational power from ground-based centers to on-orbit platforms, transforming the "sensing-communication-decision-feedback" cycle and reducing latency from acquisition to delivery. The current research presents a framework addressing the strict bandwidth, energy, and latency constraints of small satellites, focusing on maritime monitoring. The study contributes three main innovations. Firstly, it investigates the application of deep learning techniques for direct ship detection and classification from raw satellite imagery. By simplifying the onboard processing chain, our approach facilitates direct analyses without requiring computationally intensive steps such as calibration and ortho-rectification. Secondly, to address the scarcity of raw satellite data, we introduce two novel datasets, VDS2Raw and VDV2Raw, which are derived from raw data from Sentinel-2 and Vegetation and Environment Monitoring New Micro Satellite (VENuS) missions, respectively, and enriched with Automatic Identification System (AIS) records. Thirdly, we characterize the tasks' optimal single and multiple spectral band combinations through statistical and feature-based analyses validated on both datasets. In sum, we demonstrate the feasibility of the proposed method through a proof-of-concept on CubeSat-like hardware, confirming the models' potential for operational satellite-based maritime monitoring.
title Enhancing Maritime Situational Awareness through End-to-End Onboard Raw Data Analysis
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.03403