Sara Mitri, S. Frintrop, Kai Pervölz, H. Surmann, A. Nüchter
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引用次数: 59
Abstract
In this paper, we present a new combination of a biologically inspired attention system (VOCUS – Visual Object detection with a CompUtational attention System) with a robust object detection method. As an application, we built a reliable system for ball recognition in the RoboCup context. Firstly, VOCUS finds regions of interest generating a hypothesis for possible locations of the ball. Secondly, a fast classifier verifies the hypothesis by detecting balls at regions of interest. The combination of both approaches makes the system highly robust and eliminates false detections. Furthermore, the system is quickly adaptable to balls in different scenarios: The complex classifier is universally applicable to balls in every context and the attention system improves the performance by learning scenario-specific features quickly from only a few training examples.
在本文中,我们提出了一种新的生物启发注意力系统(VOCUS - Visual Object detection with a CompUtational attention system)与鲁棒目标检测方法的结合。作为一个应用,我们建立了一个可靠的系统来识别机器人世界杯的球。首先,VOCUS找到感兴趣的区域,为球的可能位置生成假设。其次,快速分类器通过检测感兴趣区域的球来验证假设。两种方法的结合使系统具有很高的鲁棒性,并消除了错误检测。此外,系统可以快速适应不同场景下的球:复杂分类器普遍适用于所有上下文中的球,注意力系统通过仅从少数训练样例中快速学习特定场景的特征来提高性能。