The number of sensor nodes in the Internet of Things is growing rapidly, leading to a large volume of data generated at sensory terminals. Frequent data transfer between the sensors and computing units causes severe limitations on the system performance in terms of energy efficiency, speed, and security. To efficiently process a substantial amount of sensory data, a novel computation paradigm that can integrate computing functions into sensor networks should be developed. The in‐sensor computing paradigm reduces data transfer and also decreases the high computing complexity by processing data locally. Here, the hardware implementation of the in‐sensor computing paradigm at the device and array levels is discussed. The physical mechanisms that lead to unique sensory response characteristics and their corresponding computing functions are illustrated. In particular, bioinspired device characteristics enable the implementation of the functionalities of neuromorphic computation. The integration technology is also discussed and the perspective on the future development of in‐sensor computing is provided.
The
prevailing transmission of image information over
the Internet
of Things demands trustworthy cryptography for high security and privacy.
State-of-the-art security modules are usually physically separated
from the sensory terminals that capture images, which unavoidably
exposes image information to various attacks during the transmission
process. Here we develop in-sensor cryptography that enables capturing
images and producing security keys in the same hardware devices. The
generated key inherently binds to the captured images, which gives
rise to highly trustworthy cryptography. Using the intrinsic electronic
and optoelectronic characteristics of the 256 molybdenum disulfide
phototransistor array, we can harvest electronic and optoelectronic
binary keys with a physically unclonable function and further upgrade
them into multiple-state ternary and double-binary keys, exhibiting
high uniformity, uniqueness, randomness, and coding capacity. This
in-sensor cryptography enables highly trustworthy image encryption
to avoid passive attacks and image authentication to prevent unauthorized
editions.
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