2019
DOI: 10.1016/j.aquaeng.2019.102017
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A computer vision system for oocyte counting using images captured by smartphone

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Cited by 22 publications
(10 citation statements)
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“…An RGB image is composed of millions of pixels; each pixel quantifies the red, green, and blue light sampled at the corresponding location (together covering the visible spectrum from approximately 400 nme700 nm) [37]. When many smartphone images are collected (e.g., one per second) and analysed together, these can be used for the real-time monitoring of dynamic processes [67]. Comparatively, an RGB video contains even more data than an image, i.e., up to 60 frames per second (FPS) collected by the smartphone camera [68].…”
Section: Optical Datamentioning
confidence: 99%
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“…An RGB image is composed of millions of pixels; each pixel quantifies the red, green, and blue light sampled at the corresponding location (together covering the visible spectrum from approximately 400 nme700 nm) [37]. When many smartphone images are collected (e.g., one per second) and analysed together, these can be used for the real-time monitoring of dynamic processes [67]. Comparatively, an RGB video contains even more data than an image, i.e., up to 60 frames per second (FPS) collected by the smartphone camera [68].…”
Section: Optical Datamentioning
confidence: 99%
“…As highlighted above, low-cost and customizable attachments can convert conventional smartphones into biosensing devices replicating the functions of expensive and inaccessible laboratory equipment. Furthermore, conditions can be semi-controlled by imposing requirements or restrictions on data acquisition, such as requiring a certain distance or viewing angle between the test/ sample and the SbS [33,40,49,67,77]. In contrast, uncontrolled conditions have no specific restrictions for image capture but require additional data processing for normalization and noise removal before result interpretation [31,73].…”
Section: Conditions During Data Acquisitionmentioning
confidence: 99%
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“…The attribute extraction can be understood as mathematical operations performed in the abstract binary data of the digital image to group regions with similarities. The chosen attributes for extraction were based on previous approaches (Costa et al, 2019) and improved with the implementation of the K-curvature extraction algorithm (Abu Bakar et al, 2015). The algorithm uses K-means to cluster similar pixels and thereby separate the image into small pieces, that is, superpixels.…”
Section: Manual Labeling and Superpixelsmentioning
confidence: 99%