2022
DOI: 10.1016/j.jii.2021.100280
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Vision-based real-time vehicle detection and vehicle speed measurement using morphology and binary logical operation

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Cited by 24 publications
(12 citation statements)
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“…As a result of combining the dilation and erosion operations, we may create several composite morphological filters. The opening and closing operations, which are defined as the sequences of erosion-dilation and dilation-erosion, respectively (Equations (3-4)), are the most common composite operators [30]:…”
Section: Properties Of the Dilation Operation Arementioning
confidence: 99%
“…As a result of combining the dilation and erosion operations, we may create several composite morphological filters. The opening and closing operations, which are defined as the sequences of erosion-dilation and dilation-erosion, respectively (Equations (3-4)), are the most common composite operators [30]:…”
Section: Properties Of the Dilation Operation Arementioning
confidence: 99%
“…Another paper (9) introduces a real-time vehicle detection and Vehicle Speed Measurement (VSM) system using image processing techniques, specifically morphology operations and binary logical processes. The process begins with capturing an image from a video sensor and selecting Regions of Interest (ROI) through a dual-line approach where the two lines are separated by a measurable distance (10) .…”
Section: Introductionmentioning
confidence: 99%
“…Other branches of AI, e.g., machine learning, often interact with computer vision in various ways to improve performance and automation through a training loop (Azghadi et al, 2020; He et al, 2017; Katija et al, 2021; Khan et al, 2021). Designed to function similarly to human vision and to automate human tasks, this interdisciplinary field has had success in reading handwritten/printed text, identifying human faces, detecting human postures and movements, guiding autonomous vehicles, and measuring the dimensions of common objects in an anthropogenic context (e.g., Falcini et al, 2017; Hu et al, 2012; Lin et al, 2014; Permaloff & Grafton, 1992; Singh et al, 2022; Sonka et al, 2014; Trinh et al, 2012; Trivedi et al, 2022). However, the techniques and applications of computer vision, along with machine learning, are relatively underdeveloped in the field of marine mammal science (Dujon & Schofield, 2019; Gray et al, 2019; Li et al, 2022; Weinstein, 2018), and few studies have offered solutions to automate fine‐scale photogrammetry in cetaceans.…”
Section: Introductionmentioning
confidence: 99%