Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Probabilistic Sensing: Intelligence in Data Sampling

About

Extending the intelligence of sensors to the data-acquisition process - deciding whether to sample or not - can result in transformative energy-efficiency gains. However, making such a decision in a deterministic manner involves risk of losing information. Here we present a sensing paradigm that enables making such a decision in a probabilistic manner. The paradigm takes inspiration from the autonomous nervous system and employs a probabilistic neuron (p-neuron) driven by an analog feature extraction circuit. The response time of the system is on the order of microseconds, over-coming the sub-sampling-rate response time limit and enabling real-time intelligent autonomous activation of data-sampling. Validation experiments on active seismic survey data demonstrate lossless probabilistic data acquisition, with a normalized mean squared error of 0.41%, and 93% saving in the active operation time of the system and the number of generated samples.

Ibrahim Albulushi, Saleh Bunaiyan, Suraj S. Cheema, Hesham ElSawy, Feras Al-Dirini• 2026

Related benchmarks

TaskDatasetResultRank
Event DetectionVAD--
4
Event DetectionSeismic
Delay (ms)0.0028
3
Event DetectionKWS--
2
Event DetectionRF--
1
Showing 4 of 4 rows

Other info

Follow for update