Kevin Bowley
· Associate Teaching ProfessorVerifiedPennsylvania State University · Department of Meteorology and Atmospheric Science
Active 2012–2024
Research topics
- Computer Science
- Sociology
- Artificial Intelligence
- Aesthetics
- Philosophy
- Visual arts
- Meteorology
- Telecommunications
- Art
- Geography
- Environmental science
- Epistemology
- Art history
Selected publications
A Machine Learning Paradigm for Studying Pictorial Realism: How Accurate are Constable's Clouds?
IEEE Transactions on Pattern Analysis and Machine Intelligence · 2023 · 6 citations
- Computer Science
- Artificial Intelligence
- Computer Science
The British landscape painter John Constable is considered foundational for the Realist movement in 19th-century European painting. Constable's painted skies, in particular, were seen as remarkably accurate by his contemporaries, an impression shared by many viewers today. Yet, assessing the accuracy of realist paintings like Constable's is subjective or intuitive, even for professional art historians, making it difficult to say with certainty what set Constable's skies apart from those of his contemporaries. Our goal is to contribute to a more objective understanding of Constable's realism. We propose a new machine-learning-based paradigm for studying pictorial realism in an explainable way. Our framework assesses realism by measuring the similarity between clouds painted by artists noted for their skies, like Constable, and photographs of clouds. The experimental results of cloud classification show that Constable approximates more consistently than his contemporaries the formal features of actual clouds in his paintings. The study, as a novel interdisciplinary approach that combines computer vision and machine learning, meteorology, and art history, is a springboard for broader and deeper analyses of pictorial realism.
Bulletin of the American Meteorological Society · 2020 · 72 citations
- Computer Science
- Meteorology
- Sociology
Abstract On 8 February 2018, a supercell storm produced gargantuan (>15 cm or >6 in. in maximum dimension) hail as it moved over the heavily populated city of Villa Carlos Paz in Córdoba Province, Argentina. Observations of gargantuan hail are quite rare, but the large population density here yielded numerous witnesses and social media pictures and videos from this event that document multiple large hailstones. The storm was also sampled by the newly installed operational polarimetric C-band radar in Córdoba. During the RELAMPAGO campaign, the authors interviewed local residents about their accounts of the storm and uncovered additional social media video and photographs revealing extremely large hail at multiple locations in town. This article documents the case, including the meteorological conditions supporting the storm (with the aid of a high-resolution WRF simulation), the storm’s observed radar signatures, and three noteworthy hailstones observed by residents. These hailstones include a freezer-preserved 4.48-in. (11.38 cm) maximum dimension stone that was scanned with a 3D infrared laser scanner, a 7.1-in. (18 cm) maximum dimension stone, and a hailstone photogrammetrically estimated to be between 7.4 and 9.3 in. (18.8–23.7 cm) in maximum dimension, which is close to or exceeds the world record for maximum dimension. Such a well-observed case is an important step forward in understanding environments and storms that produce gargantuan hail, and ultimately how to anticipate and detect such extreme events.
Frequent coauthors
- 7 shared
Eyad H. Atallah
University of Arizona
- 7 shared
John R. Gyakum
McGill University
- 5 shared
Matthew R. Kumjian
Pennsylvania State University
- 4 shared
Melissa Gervais
- 3 shared
Kelly Lombardo
Pennsylvania State University
- 3 shared
Pavlos Kollias
Stony Brook University
- 3 shared
Milagros Álvarez Imaz
National Meteorological Service
- 3 shared
Paola Salio
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