Object recognition by effective methods and means of computer vision

J. Dorner, S. Kozák, F. Dietze
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引用次数: 7

Abstract

The paper deals with the design and new solutions of application software with the aim to detect and recognize objects sensed by a camera. Objects of the sensed scene were determined and recognized after previous digital processing of data delivered by the camera. To this end the computer vision learning neural-based methods of feature extraction were used. The proposed application software may be used in various applications where the tracking of objects and understanding of a real scene is required. The results obtained will be used for teaching and research at the FEI STU in Bratislava.
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利用计算机视觉的有效方法和手段进行目标识别
本文介绍了应用软件的设计和新的解决方案,以检测和识别相机感知到的物体。通过对摄像机传送的数据进行前期数字处理,确定并识别感测场景中的物体。为此,采用了基于计算机视觉学习神经网络的特征提取方法。本发明的应用软件可用于需要跟踪物体和了解真实场景的各种应用中。获得的结果将用于布拉迪斯拉发FEI STU的教学和研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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