Deep learning constitutes a recent, modern technique for image processing and data analysis,
with promising results and large potential. This allows larger learning capabilities and thus
higher performance and precision. As deep learning has been successfully applied in various
domains, it has recently entered also the domain of agriculture. This paper proposes and in this
experimentally demonstrates fault tolerant optical penetration-based silkworm gender
identification. The key idea lies in the exploitation of the inherent dual wavelength of white and
red light illumination. In particular, the image of the posterior area of the silkworm pupa created
under white light is not only transformed into an optical region-of-interest but also is used for
pinpointing the female silkworm pupa, thus speeding up the identification time twice. For the
male and unidentified female silkworm pupae, their images are later on analyzed under red
light illumination, implying fault-tolerant operation of the system.