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A Novel Cloning Template Designing Method by Using an Artificial Bee Colony Algorithm for Edge Detection of CNN Based Imaging Sensors

机译:基于人工蜂群算法的CNN成像传感器边缘检测的新克隆模板设计方法

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Cellular Neural Networks (CNNs) have been widely used recently in applications such as edge detection, noise reduction and object detection, which are among the main computer imaging processes. They can also be realized as hardware based imaging sensors. The fact that hardware CNN models produce robust and effective results has attracted the attention of researchers using these structures within image sensors. Realization of desired CNN behavior such as edge detection can be achieved by correctly setting a cloning template without changing the structure of the CNN. To achieve different behaviors effectively, designing a cloning template is one of the most important research topics in this field. In this study, the edge detecting process that is used as a preliminary process for segmentation, identification and coding applications is conducted by using CNN structures. In order to design the cloning template of goal-oriented CNN architecture, an Artificial Bee Colony (ABC) algorithm which is inspired from the foraging behavior of honeybees is used and the performance analysis of ABC for this application is examined with multiple runs. The CNN template generated by the ABC algorithm is tested by using artificial and real test images. The results are subjectively and quantitatively compared with well-known classical edge detection methods, and other CNN based edge detector cloning templates available in the imaging literature. The results show that the proposed method is more successful than other methods.
机译:蜂窝神经网络(CNN)最近在诸如边缘检测,降噪和物体检测之类的主要计算机成像过程中得到了广泛的应用。它们也可以实现为基于硬件的成像传感器。硬件CNN模型产生强大有效的结果这一事实吸引了研究人员在图像传感器中使用这些结构的注意。可以通过正确设置克隆模板而不更改CNN的结构来实现所需的CNN行为(例如边缘检测)。为了有效地实现不同的行为,设计克隆模板是该领域最重要的研究主题之一。在这项研究中,通过使用CNN结构来进行边缘检测过程,该过程用作分割,识别和编码应用程序的初步过程。为了设计面向目标的CNN体​​系结构的克隆模板,使用了从蜜蜂的觅食行为中汲取灵感的人工蜂群(ABC)算法,并针对该应用对ABC的性能进行了多次分析。由ABC算法生成的CNN模板通过使用人工和真实的测试图像进​​行测试。将结果与已知的经典边缘检测方法以及成像文献中提供的其他基于CNN的边缘检测器克隆模板进行主观和定量比较。结果表明,该方法比其他方法更为成功。

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