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Imagimob AI the First tinyML Platform to Support Deep Learning Anomaly Detection

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Imagimob AI the First tinyML Platform to Support Deep Learning Anomaly Detection

Imagimob today announced that its new release of the tinyML platform Imagimob AI supports end-to-end development of deep learning anomaly detection. A big strength with deep learning anomaly detection is that it delivers high performance as well as eliminates the need for feature engineering, thus saving costs and reducing time-to-market.

Not only is deep learning anomaly detection better for eliminating the need for feature engineering but it can also leverage and deliver excellent performance on the new generation of powerful neural network processors that is now hitting the market. This means that when going to the edge customers can make the most of their hardware.

Feature engineering, in simple terms, is the act of converting raw observations into desired features using statistical or mathematical functions. Feature engineering normally requires domain expertise and is in general very time consuming.

With the added support for autoencoder networks in Imagimob AI, developers can now build anomaly detection in less time, and with better performance. Customers will be able to reduce development costs and shorten time to market.

The anomaly detection solution from Imagimob has been tested and verified on real-world machine and sensor data.

What's new in the latest Imagimob AI release

New anomaly detection features

  • End-to-end training and deployment of convolutional autoencoder networks for anomaly detection/predictive maintenance
  • Anomaly detection starter-project for rotating machinery to get developers up and running in minutes

Other improvements

  • Support for quantization of models in the graphical user interface. This includes quantized models, reducing model size and decreasing inference time on MCUs without an FPU
  • Improved model prediction – tracking of how models perform with millisecond resolution, before deploying given different confidence thresholds
  • Faster training and model evaluation
  • Increased support for large data sets
  • Starter project for Renesas RA2L1 – Capacitive Touch Sensing Unit
  • In total 8 starter projects, supporting sensors and MCU's from Texas Instruments, Renesas, STMicroelectronics, Acconeer and Nordic Semiconductors

The new release is available on February 28 and will help our customers to go faster from demos to production. 

Sign up for a free trial today. We are really excited to see what you build with it!

Why are we doing this?

Sensors. It’s funny, they measure all sorts of things without really understanding what they read. What if we could make them intelligent? What if we could make them feel when something is wrong?

An intelligent motion sensor would pick up the vibrations from a machine and directly know if there is a problem. An intelligent factory cell would analyze machine signals and warn an operator when something is out of the ordinary.

Now, imagine we’re adding machine learning inside the sensors or machines themselves. With the intelligence inside, data transfer costs would no longer be an issue. Neither would downtime or data integrity.

With the latest release of Imagimob AI, companies can develop such applications in-house.

Contact:
Anders Hardebring, CEO and co-founder, anders@imagimob.com, +46 70 5910614
Alexander Samuelsson, CTO and co-founder, alex@imagimob.com, +46 73 7870533

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