Difference between revisions of "Archaeology"
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[https://www.youtube.com/results?search_query=~Archaeology+Satellite+Imagery+artificial+intelligence+deep+learning+ai Youtube search...] | [https://www.youtube.com/results?search_query=~Archaeology+Satellite+Imagery+artificial+intelligence+deep+learning+ai Youtube search...] | ||
[https://www.google.com/search?q=~Archaeology+Satellite+Imagery+artificial+intelligence+deep+learning+ai ...Google search] | [https://www.google.com/search?q=~Archaeology+Satellite+Imagery+artificial+intelligence+deep+learning+ai ...Google search] | ||
+ | * [[Creatives]] ... [[History of Artificial Intelligence (AI)]] ... [[Neural Network#Neural Network History|Neural Network History]] ... [[Rewriting Past, Shape our Future]] ... [[Archaeology]] ... [[Paleontology]] | ||
* [[Case Studies]] | * [[Case Studies]] | ||
− | ** [[ | + | ** [[Satellite#Satellite Imagery|Satellite Imagery]] |
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** [[Law Enforcement]] ...solving mysteries involving crime | ** [[Law Enforcement]] ...solving mysteries involving crime | ||
* [[Python#Satellite Imagery |Satellite Imagery]] with Python | * [[Python#Satellite Imagery |Satellite Imagery]] with Python | ||
− | * [[Time# | + | * [[Time]] ... [[Time#Positioning, Navigation and Timing (PNT)|PNT]] ... [[Time#Global Positioning System (GPS)|GPS]] ... [[Causation vs. Correlation#Retrocausality| Retrocausality]] ... [[Quantum#Delayed Choice Quantum Eraser|Delayed Choice Quantum Eraser]] ... [[Quantum]] |
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* [https://singularityhub.com/2020/05/07/the-new-indiana-jones-ai-heres-how-its-overhauling-archaeology/ The New Indiana Jones? AI. Here’s How It’s Overhauling Archaeology | Peter Rejcek - Singularity Hub] | * [https://singularityhub.com/2020/05/07/the-new-indiana-jones-ai-heres-how-its-overhauling-archaeology/ The New Indiana Jones? AI. Here’s How It’s Overhauling Archaeology | Peter Rejcek - Singularity Hub] | ||
** [https://www.tandfonline.com/doi/abs/10.1080/0734578X.2018.1482186?journalCode=ysea20 Automated mound detection using lidar and object-based image analysis in Beaufort County, South Carolina | Davis, Sanger, & Lipo] | ** [https://www.tandfonline.com/doi/abs/10.1080/0734578X.2018.1482186?journalCode=ysea20 Automated mound detection using lidar and object-based image analysis in Beaufort County, South Carolina | Davis, Sanger, & Lipo] | ||
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<youtube>UaVxJ8i-pBU</youtube> | <youtube>UaVxJ8i-pBU</youtube> | ||
<b>Automated Detection of Archaeology in the New Forest using Deep Learning with Remote Sensor Data | <b>Automated Detection of Archaeology in the New Forest using Deep Learning with Remote Sensor Data | ||
− | </b><br>As a result of the New Forest Knowledge project, many new sites were discovered. This was partly due to the undertaken LiDAR survey which was followed by an intensive manual process to interpret the results. The research presented in this paper looks at methods to automate this process especially for round barrow detection using deep learning. Traditionally, automated methods require manual feature engineering to extract the visual appearance of a site on remote sensing data. Whereas this approach is difficult, expensive and bound to detect a single type of site, recent developments have moved towards automated feature learning of which deep learning is the most notable. In our approach, we use known site locations together with LiDAR data and aerial images to train Convolutional Neural Networks (CNNs). This network is typically constructed of many layers with each representing a different filter (e.g. to detect lines or edges). When this network is trained, each new site location that is fed to the network will update the weights of features to better represent the appearance of sites in the remote sensing data. For this learning process, an accurate dataset is required with a lot of examples and therefore the New Forest is a very suitable case study, especially thanks to the extensive research of the New Forest Knowledge project. In this paper, our latest results will be presented together with a future perspective on how we can scale our approach to a country wide detection method when computing power becomes even more efficient. Iris Kramer , Electronics and Computer Science, University of Southampton, UK Jonathon Hare, Electronics and Computer Science, University of Southampton, UK Isabel Sargent, Ordnance Survey, UK Adam Prugel-Bennett, Electronics and Computer Science, University of Southampton, UK | + | </b><br>As a result of the New Forest Knowledge project, many new sites were discovered. This was partly due to the undertaken LiDAR survey which was followed by an intensive manual process to interpret the results. The research presented in this paper looks at methods to automate this process especially for round barrow detection using deep learning. Traditionally, automated methods require manual feature engineering to extract the visual appearance of a site on remote sensing data. Whereas this approach is difficult, expensive and bound to detect a single type of site, recent developments have moved towards automated feature learning of which deep learning is the most notable. In our approach, we use known site locations together with LiDAR data and aerial images to train Convolutional Neural Networks (CNNs). This network is typically constructed of many layers with each representing a different filter (e.g. to detect lines or edges). When this network is trained, each new site location that is fed to the network will update the weights of features to better represent the appearance of sites in the remote sensing data. For this learning process, an accurate dataset is required with a lot of examples and therefore the New Forest is a very suitable case study, especially thanks to the extensive research of the New Forest Knowledge project. In this paper, our latest results will be presented together with a future [[perspective]] on how we can scale our approach to a country wide detection method when computing power becomes even more efficient. Iris Kramer , Electronics and Computer Science, University of Southampton, UK Jonathon Hare, Electronics and Computer Science, University of Southampton, UK Isabel Sargent, Ordnance Survey, UK Adam Prugel-Bennett, Electronics and Computer Science, University of Southampton, UK |
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Latest revision as of 15:58, 28 April 2024
Youtube search... ...Google search
- Creatives ... History of Artificial Intelligence (AI) ... Neural Network History ... Rewriting Past, Shape our Future ... Archaeology ... Paleontology
- Case Studies
- Satellite Imagery
- Law Enforcement ...solving mysteries involving crime
- Satellite Imagery with Python
- Time ... PNT ... GPS ... Retrocausality ... Delayed Choice Quantum Eraser ... Quantum
- The New Indiana Jones? AI. Here’s How It’s Overhauling Archaeology | Peter Rejcek - Singularity Hub
- Archaeology in the Age of AI | Austin Atchley Medium
- Geospatial Big Data and archaeology: Prospects and problems too great to ignore | Author links open overlay panel Mark D.McCoy - Journal of Archaeological Science
- Artificial Intelligence Has Found an Unknown 'Ghost' Ancestor in The Human Genome | Peter Dockrill - Science Alert ... Bayesian inference | Wikipedia
- Researchers Have Uncovered Yet Another Secret of the Dead Sea Scrolls, This Time Using Artificial Intelligence The scrolls, it seems, were written by two different hands. | Sarah Cascone | Artnet
- AI spots shipwrecks from the ocean surface – and even from the air | Leila Character & Beth Daley
- Agent-Based Modeling for Archaeology: Simulating the Complexity of Societies | The Santa Fe Institute Press
- Ithaca | Deep Mind - Google ... Restoring and attributing ancient texts ...agent
- Italian Archaeologists Are Using AI Robots to Piece Together the Past | Shawn Ghassemitari - Hype
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Artifacts
Youtube search... ...Google search
- The key to cracking long-dead languages? | Sophie Hardach - BBC Machine Minds
- Israeli Scientists Use AI to Reconstruct Broken Babylonian Tablets | Ruth Schuster - Haaretz
- Artificial Intelligence Takes a Crack at Decoding the Mysterious Voynich Manuscript | Jason Daley - Smithsonian Magazine
- Hidden meanings: Using artificial intelligence to translate ancient texts | Sam Francis - Robotics and Automation
- Cuneiform Digital Library Initiative (CDLI) | The British Museum
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