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With low energy consumption and low time consumption, the Chinese Academy of Sciences & University of Hong Kong team uses a new method to perform multi-task learning for internal reservoir calculations in wearable sensors.

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2023-04-12 15:46:031219browse

In-sensor multi-task learning is not only a key benefit of biological vision, but also a major goal of artificial intelligence. However, traditional silicon vision chips have a large time and energy overhead. Additionally, training traditional deep learning models is neither scalable nor affordable on edge devices.

Here, a research team from the Chinese Academy of Sciences and the University of Hong Kong proposes a materials algorithm co-design to simulate the learning paradigm of the human retina with low overhead. Based on the bottlebrush-shaped semiconductor p-NDI with efficient exciton dissociation and through-space charge transport properties, a wearable transistor-based dynamic sensor reservoir computing system is developed that exhibits excellent separability on different tasks properties, attenuation memory and echo state characteristics.

Combined with the "readout function" on the memristive organic diode, RC can recognize handwritten letters and numbers, and classify various clothing, with an accuracy of 98.04%, 88.18% and 91.76% (higher than all reported organic semiconductors).

In addition to 2D images, RC’s spatiotemporal dynamics naturally extract features from event-based videos to classify 3 types of gestures with 98.62% accuracy. In addition, the computational cost is significantly lower than traditional artificial neural networks. This work provides a promising materials-algorithm co-design for affordable and efficient photonic neuromorphic systems.

The research is titled "Wearable in-sensor reservoir computing using optoelectronic polymers with through-space charge-transport characteristics for multi-task learning" and will be published in 2023 Published in "Nature Communications" on January 28th.

The human retina not only senses, but also processes light signals simultaneously by collecting rich dynamic signals, thereby accelerating task-related learning in the downstream visual cortex. The synergy of the retina and visual cortex underlies the brain's ability to efficiently, compactly and rapidly learn multitasking and is a fundamental goal of artificial general intelligence (AGI).

In contrast, traditional silicon vision chips with physically separated sensing, processing, and storage units incur significant time and overhead due to the large and frequent data shuttling between these units. Energy overhead, as well as sequential analog-to-digital conversion, is a fundamental limitation on potential energy efficiency. This situation is further exacerbated by the slowdown in Moore's Law. Furthermore, learning in traditional deep learning models, such as recurrent neural networks for temporal signals, employs tedious training on very specific tasks (e.g., gradient descent via backpropagation through time, BPTT), which is difficult in battery access and form factors. It is neither scalable nor affordable on edge devices with limited form factors.

Significant efforts have been made to simulate the human retina and affordable learning paradigms. In terms of materials, inorganic photoresponsive two-dimensional semiconductors, such as MoS2 with defects and impurity sites, SnS with double-type defect states related to Sn and S, layered Oxidation-related defects of black phosphorus, perovskite quantum dots showing strong light control effect, h-BN/WSe2 heterostructure and performance bid that can capture and release electrons State-changing MoOx is the most widely used material for artificial retina. Additionally, organic semiconductors that are inherently biocompatible, wearable, and scalable, such as PDVT-10, chlorophyll-doped PDPP4T, and pentacene/silk and CDs bilayers, mimic biological counterparts in a more faithful manner. things.

In terms of algorithms, Reservoir Computing (RC) non-linearly projects temporal signals into feature space by collecting the fading memory of a fixed dynamic system and is considered a promising edge Learn solutions. Since the learning of RC is limited to the readout layer of long-term memory, the training cost is significantly reduced compared to traditional deep learning models. However, it still has not devised a paired materials algorithm to combine efficient artificial retina and affordable RC-based edge learning to unleash the multi-tasking potential of biomimetic neuromorphic vision.

With low energy consumption and low time consumption, the Chinese Academy of Sciences & University of Hong Kong team uses a new method to perform multi-task learning for internal reservoir calculations in wearable sensors.

#Illustration: Comparison of photocurrent response of traditional semiconductor and p-NDI, and RC system within the sensor Detailed semiconductor design principles. (Source: paper)

Here, researchers from the Chinese Academy of Sciences and the University of Hong Kong propose a material algorithm co-design of a photoresponsive semiconductor polymer (p-NDI) with efficient exciton dissociation and full-space charge transport properties. , to build an in-sensor RC for multi-task pattern classification. The flexible neuromorphic device is based on a three-terminal transistor with a p-NDI semiconductor channel. Due to its excellent photoresponse behavior and nonlinear fading memory, the device is able to simultaneously sense, remember, and preprocess optical inputs in situ (i.e., contrast enhancement and noise reduction).

With low energy consumption and low time consumption, the Chinese Academy of Sciences & University of Hong Kong team uses a new method to perform multi-task learning for internal reservoir calculations in wearable sensors.

Illustration: Multi-task classification performance. (Source: Paper)

#In addition, the synergy between exciton dissociation/charge recombination dynamics, photogating effects and through-space charge transport properties in polymers This enables the transistor-based dynamic RC system to exhibit excellent separability, attenuation memory and echo state characteristics on different tasks. These RC-based retinas are paired with a "readout function" implemented on a memristive organic ion gel diode.

The synergistic functions of signal preprocessing and dynamic RC provided by all organic optoelectronic materials achieve an accuracy of 98.04% in identifying handwritten letters and numbers and classifying various clothing respectively. , 88.18% and 91.76%, which means multi-task learning of clothing styles and sizes. The overall accuracy of the system is 88.00%, not only correctly identifying clothes, but also correctly identifying the size of the clothes. Despite being 2D images, the spatiotemporal dynamics of RC were used to classify event-based videos of left-hand waving, right-hand waving, and clapping gestures with 98.62% accuracy.

With low energy consumption and low time consumption, the Chinese Academy of Sciences & University of Hong Kong team uses a new method to perform multi-task learning for internal reservoir calculations in wearable sensors.

Illustration: Event-based video classification using the DVSGesture128 dataset. (Source: paper)

However, this p-NDI transistor-based RC does not contain the liquid electrolyte widely used in synaptic organic electrochemical transistors, thereby enhancing the reliability Scalability and operability. This work provides a promising material-algorithm co-design strategy for wearable, affordable, and efficient photonic neuromorphic systems with multi-task learning capabilities.

Paper link: https://www.nature.com/articles/s41467-023-36205-9

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