{"id":51307,"date":"2024-03-27T10:00:13","date_gmt":"2024-03-27T09:00:13","guid":{"rendered":"https:\/\/www.ferrovial.com\/blog\/?p=51307"},"modified":"2025-12-12T00:38:24","modified_gmt":"2025-12-11T23:38:24","slug":"deep-neural-networks-to-transform-the-infrastructure-sector","status":"publish","type":"post","link":"https:\/\/www.ferrovial.com\/blog\/en\/2024\/03\/deep-neural-networks-to-transform-the-infrastructure-sector\/","title":{"rendered":"Understanding deep neural networks to transform the infrastructure sector"},"content":{"rendered":"<p>In a matter of just a few years, innovation and technology have transformed the way we use images and videos. Cameras are not only used to record, but also have<strong> the ability to recognize objects <\/strong>and even to represent their trajectory. Behind this lies the great evolution in cameras, but also artificial intelligence and, more specifically, computer vision based on deep neural networks.<\/p>\n<p>Understanding how these deep neural networks work allows us not only to <strong>take advantage of their potential<\/strong>, but also to continue expanding the wide range of uses they already have in the field of infrastructure.<\/p>\n<h2>The principle: classical image analysis techniques<\/h2>\n<p>To understand how digital images and videos have been analyzed and modified in recent decades, it is best to start at the beginning. How do they work? If we focus on <strong>black and white digital images<\/strong>, we see that they consist of a two-dimensional field: width by height. The values of the field of pixels moves in a range (called color depth) that represents the different shades of gray that each pixel can have.<\/p>\n<p>Typically, this color depth ranges from 0, which is black, to 255, which is white. Between these two numbers lie <strong>a wide range of shades<\/strong>. The following image shows how a black and white image would be digitized:<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51330\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-scaled.jpg\" alt=\"How a black and white image would be digitized\" width=\"600\" height=\"293\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-scaled.jpg 2560w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-300x146.jpg 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-1024x500.jpg 1024w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-768x375.jpg 768w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-1536x749.jpg 1536w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102037\/imagen-blanco-y-negro-2048x999.jpg 2048w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<p>If the image is in color, it is represented by a three-dimensional field. In this case, the color depth represents <strong>red, green and blue<\/strong>, the three colors that make up the RGB (<em>red, green, blue<\/em>) model. The values of each pixel vary between 0, black, and 255, which can be red, green or blue. In this way, more than 16 million colors can be obtained.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51309\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27070901\/loro-en-escala-rgb.jpg\" alt=\"Parrot in RGB scale\" width=\"600\" height=\"201\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27070901\/loro-en-escala-rgb.jpg 1467w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27070901\/loro-en-escala-rgb-300x100.jpg 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27070901\/loro-en-escala-rgb-1024x343.jpg 1024w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27070901\/loro-en-escala-rgb-768x257.jpg 768w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<p>A digital video, on the other hand, is a sequence of images or frames in a given unit of time. The most common value is 30 fps<em> (frames per second)<\/em>, which means that <strong>each second of video<\/strong> is composed of 30 images. And, since these images are made up of values, mathematical operations are sufficient to modify them.<\/p>\n<p>If we wanted to <strong>lighten a black and white image<\/strong>, for example, we could add a fixed number of white to all pixels in the image, as this will bring them closer to the value 255 and thus to the color white.<\/p>\n<p>This logic would also allow us to make comparisons between one image and the next: the parts of the image that change have different values, while the unchanged parts maintain similar values. This is the <strong>basis of background subtraction algorithms<\/strong>, which differentiate between pixels in a video that have constant values (those of the background) and those that vary (those of moving objects).<\/p>\n<p>In this way, these algorithms make it possible to identify the part of a video that changes over time. The following image shows the result of applying a background subtraction algorithm on a sequence of images of the<strong> M-30 tunnels in Madrid:<\/strong><\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51332\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102207\/m30-backroundsubstractor27.png\" alt=\"Images of the M-30 tunnels in Madrid\" width=\"600\" height=\"157\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102207\/m30-backroundsubstractor27.png 1295w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102207\/m30-backroundsubstractor27-300x79.png 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102207\/m30-backroundsubstractor27-1024x268.png 1024w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102207\/m30-backroundsubstractor27-768x201.png 768w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<h2>The revolution of neural networks<\/h2>\n<p>In recent years, artificial intelligence and, more specifically, deep neural networks have made it possible to improve image recognition techniques. Neural networks are tools inspired by <strong>the functioning of the human brain. <\/strong>The following images show the representation of a neuron and its mathematical simplification:<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51334\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-scaled.jpg\" alt=\"Representation of a neuron\" width=\"600\" height=\"168\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-scaled.jpg 2560w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-300x84.jpg 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-1024x286.jpg 1024w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-768x214.jpg 768w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-1536x429.jpg 1536w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102302\/red-neuronal-2048x572.jpg 2048w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<p>The operation of neural networks, broadly speaking, is as follows: a neuron receives electrical impulses through dendrites. The functioning of the neuron makes it possible to give <strong>greater or lesser importance<\/strong> to these impulses and, consequently, to generate a different response to each of them.<\/p>\n<p>In the mathematical model, the <em>inputs <\/em>are equivalent to the dendrites of real neurons. And similarly, the entire system <strong>generates a specific response<\/strong> to each impulse. When a process is repeated in a multitude of layers with several hundred neurons each, what is called a deep artificial neural network is formed.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51336\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102429\/2024-02-01-11-18-00-entender-las-redes-neuronales-profundas-para-transformar-el-sector-de-las-infrae.png\" alt=\"Deep artificial neural network\" width=\"595\" height=\"396\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102429\/2024-02-01-11-18-00-entender-las-redes-neuronales-profundas-para-transformar-el-sector-de-las-infrae.png 596w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102429\/2024-02-01-11-18-00-entender-las-redes-neuronales-profundas-para-transformar-el-sector-de-las-infrae-300x200.png 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27102429\/2024-02-01-11-18-00-entender-las-redes-neuronales-profundas-para-transformar-el-sector-de-las-infrae-290x192.png 290w\" sizes=\"auto, (max-width: 595px) 100vw, 595px\" \/><\/p>\n<p>In these neural networks, each neuron specializes in the detection of a certain data pattern. When the input data largely match what the neuron expects, the neuron generates<strong> a signal of high intensity<\/strong>, i.e. a high output value. On the other hand, if they barely coincide, the neuron output will be low or null. This is reproduced layer after layer, extending to the end of the network, where the result is generated.<\/p>\n<p>And how do you get a network to be able to make this kind of relationship? By training it. In the case of images, this <strong>training <\/strong>is performed by introducing a set of previously classified images into the network and adjusting the parameters so that the result is as expected.<\/p>\n<p>It is a process similar to that of tuning up before a concert. The technician knows how a certain instrument should sound and therefore iteratively <strong>acts on different controls<\/strong> until the desired sound is achieved.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51297\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063113\/control.jpg\" alt=\"Sound control\" width=\"600\" height=\"400\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063113\/control.jpg 940w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063113\/control-300x200.jpg 300w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063113\/control-768x511.jpg 768w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063113\/control-290x192.jpg 290w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<p>To train neural networks it is necessary to have a huge number of labeled images (or any other <em>input<\/em>), which is computationally very expensive. For this reason, it is common to use <strong>pre-trained networks<\/strong>, in which only a fine adjustment of the parameters is necessary to adapt them to the task to be performed. This is known as <em>transfer learning<\/em> and allows you to obtain very good results with little training time.<\/p>\n<p>Some examples of highly used pre-trained networks are <strong>YOLO, MobileNet and EfficientDe<\/strong>. Many of these come from large corporations like Google, which makes them available to the community for use. Some companies also offer pre-trained networks as a product for purchase and others train their own networks for a specific use.<\/p>\n<p>Once the network is trained, it can be very lightweight and agile, allowing it to be used in real time<strong> on very simple devices<\/strong> such as cell phones or video surveillance cameras.<\/p>\n<h2>The application of neural networks to traffic cameras<\/h2>\n<p>Innovation has revolutionized the applications of deep neural networks and made them very useful. One example is<strong> traffic cameras<\/strong>, which allow different types of vehicles, other objects and living beings to be identified and classified with a certain degree of confidence.<\/p>\n<p>These cameras are also able to interpret and record the trajectories of objects. It is common for these models to be accompanied by <strong>relative location algorithms<\/strong> within the image, so that the identified object can be inscribed in a form such as a rectangle.<\/p>\n<p>With the relative position of the rectangles in the image and by using <em>tracking <\/em>algorithms, it is possible to represent <strong>the trajectories of the objects<\/strong>, as shown in the following image.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-51299\" src=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063158\/tracking-de-la-trayectoria-de-vehiculos.jpg\" alt=\"Tracking of vehicle trajectory\" width=\"600\" height=\"339\" srcset=\"https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063158\/tracking-de-la-trayectoria-de-vehiculos.jpg 682w, https:\/\/static.ferrovial.com\/wp-content\/uploads\/sites\/3\/2024\/03\/27063158\/tracking-de-la-trayectoria-de-vehiculos-300x169.jpg 300w\" sizes=\"auto, (max-width: 600px) 100vw, 600px\" \/><\/p>\n<p>This has many applications. It allows us to quantify, for example,<strong> how many vehicles<\/strong> cross a line or how many are inside a polygon at any given time.<\/p>\n<p>Artificial intelligence and deep neural networks specifically have multiple applications in our daily lives. They allow us to solve repetitive and complex tasks in a short time and <strong>with very satisfactory results. <\/strong>A good understanding of how they work opens up a very wide range of uses in the field of infrastructure and, just as importantly, allows them to be further expanded.<\/p>\n<p><em>An article by Felipe May\u00e1n Momblan<\/em><\/p>\n","protected":false},"excerpt":{"rendered":"<p>In a matter of just a few years, innovation and technology have transformed the way we use images and videos. Cameras are not only used to record, but also have the ability to recognize objects and even to represent their trajectory. Behind this lies the great evolution in cameras, but also artificial intelligence and, more [&hellip;]<\/p>\n","protected":false},"featured_media":51306,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"_acf_changed":false,"footnotes":""},"nivel-1":[],"nivel-2":[4747,4743,4746],"nivel-3":[],"nivel-4":[],"nivel-5":[],"topic":[7300],"coauthors":[7162],"class_list":["post-51307","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","nivel-2-artificial-intelligence","nivel-2-infrastructures","nivel-2-innovation","topic-technology-and-innovation"],"acf":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v27.2 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>Understanding deep neural networks to transform the infrastructure sector<\/title>\n<meta name=\"description\" content=\"Understanding how these deep neural networks work allows us not only to take advantage of their 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