Business Introduction

SemsiML

In order to realize a convenient, safe and secure society, it is essential to have "sensors" that detect various situations and to utilize the data obtained from those sensors. We are introducing the "SensiML Analytics Toolkit", an embedded AI development support tool using AutoML (Automated Machine Learning) to make it easier to utilize sensor data.

  1. Embedded AI training is expensive and time-consuming, making it difficult to get started
  2. Considering introducing embedded AI, but lacking expertise outside of the field
  3. I want to add embedded AI functionality to the product's onboard microcontroller and perform status monitoring.

The SensiML analytics toolkit can solve these problems.

Benefits of adding embedded AI functions to system control microcontrollers

  • Embedded AI functionality can be added without increasing hardware costs
  • Compared to processing by a microcontroller alone, it is possible to distinguish between complex operating conditions.

Microcontroller only

easyMotion Detection

Simple stop/move status
Easy to detect

Basic microcontroller configuration image

Microcomputer + Embedded AI

detailMotion Detection

From time series data changes such as vibration
Complex condition determination possible

Microcontroller + embedded AI implementation configuration image

By using the SensiML Analytics Toolkit, anyone can easily create and optimize models, even if they do not have expertise in data science or machine learning. In addition, by automatically trying many algorithms and hyperparameters, you can efficiently find the optimal model, reducing time and costs and improving performance.

Traditional development methods

Development methodology with SensiML analytics toolkit

Since time series data from various sensors is available, it can be used in many applications.

Solution 1: Gesture Recognition

Advanced motion sensors such as IMUs, radars and passive IR grid array sensor ICs are being adopted into an ever-increasing number of IoT products. This creates exciting new opportunities to leverage these sensors for smart gesture-controlled interfaces. Devices that can benefit include:

  • Consumer Wearables
  • Smart Glasses
  • Smart Home Appliances and Devices
  • Wearables for Industrial Workers
  • Toys and Gaming Accessories

Evaluation is easy with the SensiML analytics tool and QuickLogic evaluation board.

Made by QuickLogic
Evaluation Board

SensiML Analytics Toolkit (DataStudio)

Solution 2: Keyword Spotting

By integrating custom wake words and command phrases directly into products with built-in microphones, there is no dependency on third-party smart home hubs and voice control capabilities can be tailored to meet the user experience goals of your unique product.

SensiML's graphical UI pipeline allows easy and fast customization and rapid integration of command vocabulary into optimized deep learning ML embedded code available as a library or in C source format.

Solution 3: Anomaly Detection

Detects abnormalities in the robot.

The robot is equipped with an MPU board equipped with an acceleration sensor, and only normal acceleration sensor data is trained. If the robot comes into contact with an object or a person, unknown data is detected and the robot arm stops.

Things (people) come into contact

Unknown is detected and the robot arm stops.

For inquiries regarding this project, please contact:

For inquiries regarding this project, please contact:

Telephone enquiries

Third Solution Technology Department

03-6361-8081

Reception hours: Weekdays from 9:00am to 5:00pm

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