2015
DOI: 10.1016/j.procs.2015.07.525
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Cattle Race Classification Using Gray Level Co-occurrence Matrix Convolutional Neural Networks

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Cited by 48 publications
(30 citation statements)
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“…Other operations involved the creation of bounding boxes (Chen, et al, 2017), (Sa, et al, 2016), (McCool, Perez, & Upcroft, 2017), (Milioto, Lottes, & Stachniss, 2017) to facilitate detection of weeds or counting of fruits. Some datasets were converted to grayscale (Santoni, Sensuse, Arymurthy, & Fanany, 2015), (Amara, Bouaziz, & Algergawy, 2017) or to the HSV color model (Luus, Salmon, van den Bergh, & Maharaj, 2015), (Lee, Chan, Wilkin, & Remagnino, 2015).…”
Section: Data Pre-processingmentioning
confidence: 99%
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“…Other operations involved the creation of bounding boxes (Chen, et al, 2017), (Sa, et al, 2016), (McCool, Perez, & Upcroft, 2017), (Milioto, Lottes, & Stachniss, 2017) to facilitate detection of weeds or counting of fruits. Some datasets were converted to grayscale (Santoni, Sensuse, Arymurthy, & Fanany, 2015), (Amara, Bouaziz, & Algergawy, 2017) or to the HSV color model (Luus, Salmon, van den Bergh, & Maharaj, 2015), (Lee, Chan, Wilkin, & Remagnino, 2015).…”
Section: Data Pre-processingmentioning
confidence: 99%
“…Furthermore, some papers used features extracted from the images as input to their models, such as shape and statistical features (Hall, McCool, Dayoub, Sunderhauf, & Upcroft, 2015), histograms (Hall, McCool, Dayoub, Sunderhauf, & Upcroft, 2015), (Xinshao & Cheng, 2015), (Rebetez, J., et al, 2016), Principal Component Analysis (PCA) filters (Xinshao & Cheng, 2015), Wavelet transformations (Kuwata & Shibasaki, 2015) and Gray Level Co-occurrence Matrix (GLCM) features (Santoni, Sensuse, Arymurthy, & Fanany, 2015). Satellite or aerial images involved a combination of pre-processing steps such as orthorectification (Lu, et al, 2017), (Minh, et al, 2017) calibration and terrain correction (Kussul, Lavreniuk, Skakun, & Shelestov, 2017), (Minh, et al, 2017) and atmospheric correction (Rußwurm & Körner, 2017).…”
Section: Data Pre-processingmentioning
confidence: 99%
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“…Furthermore, the majority of related work included some image pre-processing steps, where each image in the data set was reduced to a smaller size, before being used as input to the model, such as 256 × 256, 128 × 128, 96 × 96, 60 × 60 pixels, or converted to greyscale (Santoni et al ., 2015). Most of the studies divided their data randomly between training and testing/verification sets, using a ratio of 80 : 20 or 90 : 10, respectively.…”
Section: Convolutional Neural Network Applications In Agriculturementioning
confidence: 99%
“…Within these, Demmers et al [17,18] have developed first order DRNN (Differential Recurrent Neural Networks) models to control and predict growth of pigs and broiler chickens (by estimating their weight) using field sensory data and a combination of static and dynamic environmental variables. Santoni et al [19] have built a CNN model to classify cattles into 5 different races using grayscale images.…”
Section: Introductionmentioning
confidence: 99%