摘要: We proposed a broad-spectrum diffractive deep neural network (BS-D2NN)
framework, which incorporates multi-wavelength channels of input lightfields
and performs a parallel phase-only modulation utilizing a layered passive mask
architecture. A complementary multi-channel base learner cluster is formed in a
homogeneous ensemble framework based on the diffractive dispersion during
lightwave modulation. In addition, both the optical Sum operation and the
Hybrid (optical-electronic) Maxout operation are performed for motivating the
BS-D2NN to learn and construct a mapping between input lightfields and truth
labels under heterochromatic ambient lighting. The BS-D2NN can be trained using
deep learning algorithms so as to perform a kind of wavelength-insensitive
high-accuracy object classification.