The vast number of existing IP cameras in current road networks is an opportunity to take advantage of the captured data and analyze the video and detect any significant events. For this purpose, it is necessary to detect moving vehicles, a task that was carried out using classical artificial vision techniques until a few years ago. Nowadays, significant improvements have been obtained by deep learning networks. Still, object detection is considered one of the leading open issues within computer vision. The current scenario is constantly evolving, and new models and techniques are appearing trying to improve this field. In particular, new problems and drawbacks appear regarding detecting small objects, which correspond mainly to the vehicles that appear in the road scenes. All this means that new solutions that try to improve the low detection rate of small elements are essential. Among the different emerging research lines, this work focuses on the detection of small objects. In particular, our proposal aims to vehicle detection from images captured by video surveillance cameras. In this work, we propose a new procedure for detecting small-scale objects by applying super-resolution processes based on detections performed by convolutional neural networks \emph{(CNN)}. The neural network is integrated with processes that are in charge of increasing the resolution of the images to improve the object detection performance. This solution has been tested for a set of traffic images containing elements of different scales to test the efficiency according to the detections obtained by the model, thus demonstrating that our proposal achieves good results in a wide range of situations.
翻译:目前公路网络中现有的大量IP摄像机是利用所捕取的数据和分析录像并探测任何重大事件的机会。为此目的,有必要探测移动车辆,这是一项直到几年前使用古典人工视觉技术完成的任务。如今,通过深层学习网络已经取得了重大改进。但是,物体探测被认为是计算机视野中主要的未决问题之一。目前的情况是不断演变,新的模型和技术似乎正在试图改进这个领域。特别是,发现主要与在路景中出现的车辆相对应的小物体方面出现了新的问题和缺点。所有这一切都意味着必须找到新的解决办法,设法提高小元素的低探测率。在不同的研究线中,这项工作侧重于小物体的探测。特别是,我们的提案旨在用车辆探测视频监视摄像头所摄到的图像。在这项工作中,我们提出了一种新的程序,通过利用进化神经网络所探测到的超分辨率过程来探测小物体。通过宽度的观测,通过测试图像的测得范围,通过测试图像的测得质量,从而将测量结果与测得的大小过程结合起来。通过测量图像的测得范围,通过测量结果,通过测试测量图像的测得不同分辨率,从而测试测量结果。