7 results on '"Ajayakumar, A."'
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2. Using spatial video and deep learning for automated mapping of ground-level context in relief camps
- Author
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Jayakrishnan Ajayakumar, Andrew J. Curtis, Felicien M. Maisha, Sandra Bempah, Afsar Ali, Naveen Kannan, Grace Armstrong, and John Glenn Morris
- Subjects
Deep learning ,Automated mapping ,Spatial video ,Computer applications to medicine. Medical informatics ,R858-859.7 - Abstract
Abstract Background The creation of relief camps following a disaster, conflict or other form of externality often generates additional health problems. The density of people in a highly stressed environment with questionable safe food and water access presents the potential for infectious disease outbreaks. These camps are also not static data events but rather fluctuate in size, composition, and level and quality of service provision. While contextualized geospatial data collection and mapping are vital for understanding the nature of these camps, various challenges, including a lack of data at the required spatial or temporal granularity, as well as the issue of sustainability, can act as major impediments. Here, we present the first steps toward a deep learning-based solution for dynamic mapping using spatial video (SV). Methods We trained a convolutional neural network (CNN) model on a SV dataset collected from Goma, Democratic Republic of Congo (DRC) to identify relief camps from video imagery. We developed a spatial filtering approach to tackle the challenges associated with spatially tagging objects such as the accuracy of global positioning system and positioning of camera. The spatial filtering approach generates smooth surfaces of detection, which can further be used to capture changes in microenvironments by applying techniques such as raster math. Results The initial results suggest that our model can detect temporary physical dwellings from SV imagery with a high level of precision, recall, and object localization. The spatial filtering approach helps to identify areas with higher concentrations of camps and the web-based tool helps to explore these areas. The longitudinal analysis based on applying raster math on the detection surfaces revealed locations, which had a considerable change in the distribution of tents over space and time. Conclusions The results lay the groundwork for automated mapping of spatial features from imagery data. We anticipate that this work is the building block for a future combination of SV, object identification and automatic mapping that could provide sustainable data generation possibilities for challenging environments such as relief camps or other informal settlements.
- Published
- 2024
- Full Text
- View/download PDF
3. Exploring convolutional neural networks and spatial video for on-the-ground mapping in informal settlements
- Author
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Jayakrishnan Ajayakumar, Andrew J. Curtis, Vanessa Rouzier, Jean William Pape, Sandra Bempah, Meer Taifur Alam, Md. Mahbubul Alam, Mohammed H. Rashid, Afsar Ali, and John Glenn Morris
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 - Abstract
Abstract Background The health burden in developing world informal settlements often coincides with a lack of spatial data that could be used to guide intervention strategies. Spatial video (SV) has proven to be a useful tool to collect environmental and social data at a granular scale, though the effort required to turn these spatially encoded video frames into maps limits sustainability and scalability. In this paper we explore the use of convolution neural networks (CNN) to solve this problem by automatically identifying disease related environmental risks in a series of SV collected from Haiti. Our objective is to determine the potential of machine learning in health risk mapping for these environments by assessing the challenges faced in adequately training the required classification models. Results We show that SV can be a suitable source for automatically identifying and extracting health risk features using machine learning. While well-defined objects such as drains, buckets, tires and animals can be efficiently classified, more amorphous masses such as trash or standing water are difficult to classify. Our results further show that variations in the number of image frames selected, the image resolution, and combinations of these can be used to improve the overall model performance. Conclusion Machine learning in combination with spatial video can be used to automatically identify environmental risks associated with common health problems in informal settlements, though there are likely to be variations in the type of data needed for training based on location. Success based on the risk type being identified are also likely to vary geographically. However, we are confident in identifying a series of best practices for data collection, model training and performance in these settings. We also discuss the next step of testing these findings in other environments, and how adding in the simultaneously collected geographic data could be used to create an automatic health risk mapping tool.
- Published
- 2021
- Full Text
- View/download PDF
4. Exploring convolutional neural networks and spatial video for on-the-ground mapping in informal settlements
- Author
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Ajayakumar, Jayakrishnan, Curtis, Andrew J., Rouzier, Vanessa, Pape, Jean William, Bempah, Sandra, Alam, Meer Taifur, Alam, Md. Mahbubul, Rashid, Mohammed H., Ali, Afsar, and Morris, John Glenn
- Published
- 2021
- Full Text
- View/download PDF
5. Addressing the data guardian and geospatial scientist collaborator dilemma: how to share health records for spatial analysis while maintaining patient confidentiality
- Author
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Jayakrishnan Ajayakumar, Andrew J. Curtis, and Jacqueline Curtis
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 - Abstract
Abstract Background The utility of being able to spatially analyze health care data in near-real time is a growing need. However, this potential is often limited by the level of in-house geospatial expertise. One solution is to form collaborative partnerships between the health and geoscience sectors. A challenge in achieving this is how to share data outside of a host institution’s protection protocols without violating patient confidentiality, and while still maintaining locational geographic integrity. Geomasking techniques have been previously championed as a solution, though these still largely remain an unavailable option to institutions with limited geospatial expertise. This paper elaborates on the design, implementation, and testing of a new geomasking tool Privy, which is designed to be a simple yet efficient mechanism for health practitioners to share health data with geospatial scientists while maintaining an acceptable level of confidentiality. The basic premise of Privy is to move the important coordinates to a different geography, perform the analysis, and then return the resulting hotspot outputs to the original landscape. Results We show that by transporting coordinates through a combination of random translations and rotations, Privy is able to preserve location connectivity among spatial point data. Our experiments with typical analytical scenarios including spatial point pattern analysis and density analysis shows that, along with protecting spatial privacy, Privy maintains the spatial integrity of data which reduces information loss created due to data augmentation. Conclusion The results from this study suggests that along with developing new mathematical techniques to augment geospatial health data for preserving confidentiality, simple yet efficient software solutions can be developed to enable collaborative research among custodians of medical and health data records and GIS experts. We have achieved this by developing Privy, a tool which is already being used in real-world situations to address the spatial confidentiality dilemma.
- Published
- 2019
- Full Text
- View/download PDF
6. Addressing the data guardian and geospatial scientist collaborator dilemma: how to share health records for spatial analysis while maintaining patient confidentiality
- Author
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Ajayakumar, Jayakrishnan, Curtis, Andrew J., and Curtis, Jacqueline
- Published
- 2019
- Full Text
- View/download PDF
7. Exploring convolutional neural networks and spatial video for on-the-ground mapping in informal settlements
- Author
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Meer T. Alam, John Glenn Morris, Afsar Ali, Jean W. Pape, Md. Mahbubul Alam, Jayakrishnan Ajayakumar, Andrew Curtis, Mohammed H. Rashid, Vanessa Rouzier, and Sandra Bempah
- Subjects
General Computer Science ,Computer science ,Health geography ,030231 tropical medicine ,010501 environmental sciences ,lcsh:Computer applications to medicine. Medical informatics ,Machine learning ,computer.software_genre ,01 natural sciences ,Convolutional neural network ,Health informatics ,Machine Learning ,03 medical and health sciences ,0302 clinical medicine ,Risk Factors ,Animals ,Humans ,Spatial analysis ,0105 earth and related environmental sciences ,Data collection ,Artificial neural network ,business.industry ,Data Collection ,Research ,Public Health, Environmental and Occupational Health ,General Business, Management and Accounting ,Haiti ,Scalability ,lcsh:R858-859.7 ,Artificial intelligence ,Neural Networks, Computer ,Scale (map) ,business ,computer - Abstract
Background The health burden in developing world informal settlements often coincides with a lack of spatial data that could be used to guide intervention strategies. Spatial video (SV) has proven to be a useful tool to collect environmental and social data at a granular scale, though the effort required to turn these spatially encoded video frames into maps limits sustainability and scalability. In this paper we explore the use of convolution neural networks (CNN) to solve this problem by automatically identifying disease related environmental risks in a series of SV collected from Haiti. Our objective is to determine the potential of machine learning in health risk mapping for these environments by assessing the challenges faced in adequately training the required classification models. Results We show that SV can be a suitable source for automatically identifying and extracting health risk features using machine learning. While well-defined objects such as drains, buckets, tires and animals can be efficiently classified, more amorphous masses such as trash or standing water are difficult to classify. Our results further show that variations in the number of image frames selected, the image resolution, and combinations of these can be used to improve the overall model performance. Conclusion Machine learning in combination with spatial video can be used to automatically identify environmental risks associated with common health problems in informal settlements, though there are likely to be variations in the type of data needed for training based on location. Success based on the risk type being identified are also likely to vary geographically. However, we are confident in identifying a series of best practices for data collection, model training and performance in these settings. We also discuss the next step of testing these findings in other environments, and how adding in the simultaneously collected geographic data could be used to create an automatic health risk mapping tool.
- Published
- 2020
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