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                  <mods:namePart>García Aguilar, Iván</mods:namePart>
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                  <mods:namePart>Luque-Baena, Rafael Marcos</mods:namePart>
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                  <mods:namePart>Domínguez-Merino, Enrique</mods:namePart>
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                  <mods:namePart>López-Rubio, Ezequiel</mods:namePart>
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               <mods:identifier type="citation">García-Aguilar, I., Luque-Baena, R. M., Domínguez, E., &amp; López-Rubio, E. (2023). Small-Scale Urban Object Anomaly Detection Using Convolutional Neural Networks with Probability Estimation. Sensors, 23(16), 7185. https://doi.org/10.3390/s23167185</mods:identifier>
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               <mods:identifier type="doi">10.3390/s23167185</mods:identifier>
               <mods:abstract>Anomaly detection in sequences is a complex problem in security and surveillance. With the&#xd;
exponential growth of surveillance cameras in urban roads, automating them to analyze the data and&#xd;
automatically identify anomalous events efficiently is essential. This paper presents a methodology&#xd;
to detect anomalous events in urban sequences using pre-trained convolutional neural networks&#xd;
(CNN) and super-resolution (SR) models. The proposal is composed of two parts. In the offline stage,&#xd;
the pre-trained CNN model evaluated a large dataset of urban sequences to detect and establish the&#xd;
common locations of the elements of interest. Analyzing the offline sequences, a density matrix is&#xd;
calculated to learn the spatial patterns and identify the most frequent locations of these elements.&#xd;
Based on probabilities previously calculated from the offline analysis, the pre-trained CNN, now&#xd;
in an online stage, assesses the probability of anomalies appearing in the real-time sequence using&#xd;
the density matrix. Experimental results demonstrate the effectiveness of the presented approach&#xd;
in detecting several anomalies, such as unusual pedestrian routes. This research contributes to&#xd;
urban surveillance by providing a practical and reliable method to improve public safety in urban&#xd;
environments. The proposed methodology can assist city management authorities in proactively&#xd;
detecting anomalies, thus enabling timely reaction and improving urban safety.</mods:abstract>
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               <mods:accessCondition type="useAndReproduction">Atribución 4.0 Internacional</mods:accessCondition>
               <mods:subject>
                  <mods:topic>Redes neuronales (Informática)</mods:topic>
               </mods:subject>
               <mods:titleInfo>
                  <mods:title>Small-Scale Urban Object Anomaly Detection Using Convolutional Neural Networks with Probability Estimation.</mods:title>
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