Sara Khalid’s scientific contributions

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Publications (2)


Predicting malaria outbreaks using earth observation measurements and spatiotemporal deep learning modelling: a South Asian case study from 2000 to 2017
  • Article

April 2024

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14 Reads

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3 Citations

The Lancet Planetary Health

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Muhammad Talha Quddoos

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Momin Uppal

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Sara Khalid

Figure 2: (i) Qualitative evaluation of our proposed Multi-spectral approach on region of Punjab, Pakistan. In first stage of our proposed two stage strategy, around > 99% data is filtered out and only positive potential candidates (red pixels images) are passed to second stage for localization. (ii) Qualitative evaluation of Orientation aware YOLOv3. (Satellite images courtesy Google Earth).
Figure 3: Spectral Indices of kiln locations of Punjab, Pakistan (Darker colour shows more index value).
Mitigating climate and health impact of small-scale kiln industry using multi-spectral classifier and deep learning
  • Preprint
  • File available

March 2023

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62 Reads

Industrial air pollution has a direct health impact and is a major contributor to climate change. Small scale industries particularly bull-trench brick kilns are one of the major causes of air pollution in South Asia often creating hazardous levels of smog that is injurious to human health. To mitigate the climate and health impact of the kiln industry, fine-grained kiln localization at different geographic locations is needed. Kiln localization using multi-spectral remote sensing data such as vegetation index results in a noisy estimates whereas use of high-resolution imagery is infeasible due to cost and compute complexities. This paper proposes a fusion of spatio-temporal multi-spectral data with high-resolution imagery for detection of brick kilns within the "Brick-Kiln-Belt" of South Asia. We first perform classification using low-resolution spatio-temporal multi-spectral data from Sentinel-2 imagery by combining vegetation, burn, build up and moisture indices. Then orientation aware object detector: YOLOv3 (with theta value) is implemented for removal of false detections and fine-grained localization. Our proposed technique, when compared with other benchmarks, results in a 21x improvement in speed with comparable or higher accuracy when tested over multiple countries.

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Citations (1)


... We propose to harness current breakthroughs in Earth-observation (EO) technology, which provides the ability to generate accurate, up-to-date, publicly accessible, and reliable data, which is required for equitable access planning and resource allocation to ensure that safe medicines, vaccines, and other interventions reach everyone, particularly those in greatest need, during normal times [27,7]. This data can also be used in emergency scenarios such as pandemics and natural catastrophes, which disproportionately affect underserved groups [17]. Therefore, this data creation can help identify requirements and track progress towards increasing equal access to healthcare worldwide. ...

Reference:

Data-Driven Approach to assess and identify gaps in healthcare set up in South Asia
Predicting malaria outbreaks using earth observation measurements and spatiotemporal deep learning modelling: a South Asian case study from 2000 to 2017
  • Citing Article
  • April 2024

The Lancet Planetary Health