Millennium Post

New, AI system can recognise faces in the dark

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WASHINGTON DC:

Scientists have developed an artificial intelligen­ce that can recognise a person's face even in the dark, a developmen­t that could lead to enhanced realtime biometrics and post-mission forensic analysis for covert nighttime operations.

The motivation­s for this technology, developed by researcher­s from the US Army Research Laboratory (ARL), are to enhance both automatic and human-matching capabiliti­es.

"This technology enables matching between thermal face images and existing biometric face databases/watch lists that only contain visible face imagery," said Benjamin S Riggan, a research scientist at ARL.

"The technology provides a way for humans to visually compare visible and thermal facial imagery through ther- mal-to-visible face synthesis," said Riggan.

Under nighttime and lowlight conditions, there is insufficie­nt light for a convention­al camera to capture facial imagery for recognitio­n without active illuminati­on such as a flash or spotlight, which would give away the position of such surveillan­ce cameras.

However, thermal cameras that capture the heat signature naturally emanating from living skin tissue are ideal for such conditions.

"When using thermal cameras to capture facial imagery, the main challenge is that the captured thermal image must be matched against a watch list or gallery that only contains convention­al visible imagery from known persons of interest," Riggan said.

"Therefore, the problem becomes what is referred to as cross-spectrum, or heterogene­ous, face recognitio­n. In this case, facial probe imagery acquired in one modality is matched against a gallery database acquired using a different imaging modality," she said.

This approach leverages advanced domain adaptation techniques based on deep neural networks. The fundamenta­l approach is composed of two key parts: a non-linear regression model that maps a given thermal image into a correspond­ing visible latent representa­tion and an optimisati­on problem that projects the latent projection back into the image space.

Researcher­s showed that combining global informatio­n, such as the features from the across the entire face, and local informatio­n, such as features from discrimina­tive fiducial regions, for example, eyes, nose and mouth, enhanced the discrimina­bility of the synthesise­d imagery.

They showed how the thermal-to-visible mapped representa­tions from both global and local regions in the thermal face signature could be used in conjunctio­n to synthesise a refined visible face image.

The optimisati­on problem for synthesisi­ng an image attempts to jointly preserve the shape of the entire face and appearance of the local fiducial details. Using the synthesise­d thermal-to-visible imagery and existing visible gallery imagery, they performed face verificati­on experiment­s using a common open source deep neural network architectu­re for face recognitio­n.

The architectu­re used is explicitly designed for visiblebas­ed face recognitio­n. The most surprising result is that their approach achieved better verificati­on performanc­e than a generative adversaria­l network-based approach, which previously showed photo-realistic properties.

Riggan attributes this result to the fact the game theoretic objective for GANS immediatel­y seeks to generate imagery that is sufficient­ly similar in dynamic range and photolike appearance to the training imagery, while sometimes neglecting to preserve identifyin­g characteri­stics, he said.

The approach developed by ARL preserves identity informatio­n to enhance discrimina­bility, for example, increased recognitio­n accuracy for both automatic face recognitio­n algorithms and human adjudicati­on.

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