Publication | Closed Access
MACSen: A Processing-In-Sensor Architecture Integrating MAC Operations Into Image Sensor for Ultra-Low-Power BNN-Based Intelligent Visual Perception
46
Citations
14
References
2020
Year
Event CameraEngineeringComputer ArchitectureHardware Bnn ImplementationImage SensorSensor NetworksImage AnalysisComputing SystemsVision SensorVision RecognitionElectrical EngineeringEnergy HarvestingMachine VisionMacsen PrototypeComputer EngineeringData ConversionComputer ScienceDeep LearningComputer VisionBiomedical SensorsHardware AccelerationSensorsImage ProcessorIn-memory Computing
Current BNN-based visual system wastes lots of energy in data conversion and movement, hindering its deployment on battery-powered devices. This brief proposes MACSen, an ultra-low-power processing-in-sensor (PIS) architecture which integrates sensing with computing and directly outputs the computation results. The multiply-and-accumulation (MAC) operation in BNN is fused with the Correlated Double Sampling (CDS) procedure together to save data conversion power. A 4 × 4 MACSen prototype of 180nm process was fabricated for demonstration, and it achieves the frame rate of 1000fps and the energy efficiency of 1.32TOP/s/W in computation mode. Furthermore, the system demonstration on MNIST dataset classification task shows that the hardware BNN implementation integrating MACSen incurs no accuracy degradation and gains 61% energy saving compared with state-of-the-art work.
| Year | Citations | |
|---|---|---|
Page 1
Page 1