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Performance assessment of the modified-hybrid optical neural network filter

机译:混合光学神经网络滤波器的性能评估

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摘要

We present in detail the recorded results of the modified-hybrid optical neural network (M-HONN) filter during a full series of tests to examine its robustness and overall performance for object recognition tasks. We test the M-HONN filter for its detectability and peak sharpness with within-class distortion of the input object, its discrimination ability between an in-class and out-of-class object, and its performance with cluttered images of the true-class object. The M-HONN filter is found to exhibit good detectability, an ability to maintain its correlation-peak sharpness throughout the recorded tests, good discrimination ability, and an ability to detect the true-class object within cluttered input images. Additionally we observe the M-HONN filter's performance within the tests in comparison with the constrained-hybrid optical neural network filter for the first three series of tests and the synthetic discriminant function-maximum average correlation height filter for the fourth set of tests.
机译:我们详细介绍了经过修改的混合光学神经网络(M-HONN)滤波器在一系列测试中的记录结果,以检查其鲁棒性和目标识别任务的总体性能。我们测试了M-HONN滤波器的可检测性和峰值清晰度,包括输入对象的类内失真,其在类内和类外对象之间的辨别能力以及在杂乱的真实类图像下的性能目的。发现M-HONN滤镜具有良好的可检测性,在整个记录的测试中保持其相关峰清晰度的能力,良好的辨别能力以及在杂乱的输入图像内检测真实物体的能力。此外,与前三个系列测试的约束混合光学神经网络滤波器和第四组测试的合成判别函数-最大平均相关高度滤波器相比,我们在测试中观察了M-HONN滤波器的性能。

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