4.7 Article

Using a deep learning model to quantify trash accumulation for cleaner urban stormwater

Journal

COMPUTERS ENVIRONMENT AND URBAN SYSTEMS
Volume 93, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.compenvurbsys.2021.101752

Keywords

Urban trash; Litter; Stormwater; Machine learning; Mask R-CNN

Funding

  1. City of Salinas
  2. City of Anaheim

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With growing understanding of the impact of trash on aquatic habitats, cities need to reduce trash inputs to waterways and oceans. This study presents a cost-efficient approach using vehicle mounted cameras and deep learning models to monitor urban trash. The deep learning-based method outperforms traditional visual assessments, providing more efficient data collection and stronger insights into urban trash sources and changes over time.
With growing understanding of trash impacts on aquatic habitats throughout the world, cities increasingly face regulatory requirements to reduce trash inputs to local waterways and the ocean, but they often rely upon insufficient monitoring data to prioritize and measure trash reduction effectiveness. We present an approach designed to make urban trash monitoring more cost-efficient and align the data collected with critical information needs of cities. We quantified urban trash accumulation along roadsides using vehicle mounted cameras and a deep convolutional neural network model to identify trash in the imagery captured. We compared the trash detection performance of three different models, with the best performing model (Mask R-CNN) achieving 91% recall, 83% precision, and 77% accuracy using data collected along 84 road segments in two California Cities. Trash detection model outputs were interpreted via a statistical model to relate the proportion of image pixels identified as trash to measured trash volumes. The resulting model estimates explained 67% of the variance in measured trash volumes collected on roadsides, which is more than double the variance explained by walking visual assessments. With vastly more efficient data collection compared to the visual assessments, deep learning-based monitoring approaches can provide a stronger basis for understanding urban trash sources, changes over time, and cost-effective compliance with stormwater regulatory requirements.

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