This application claims priority under 35 U.S.C. § 119 to patent application no. IN 2022 4103 7881, filed on Jun. 30, 2022 in India, the disclosure of which is incorporated herein by reference in its entirety.
The disclosure relates to an apparatus and a method for controlling power state of a mobile device such as laptop, mobile phone, etc.
Power consumption is an important challenge in using the mobile electronic devices such as laptop, mobile phone, etc. Different strategies are being used by the corporations to optimize the power efficiency of the mobile electronic devices.
United Stated published patent application no. US2021/255686 discloses a method and system for managing power states transitions of a portable electronic device. A gesture recognition module recursively checks the variation between ‘flat’ and ‘not flat’ states. The module calculates the mean value of acceleration along the 3 axes to detect if the device is in a flat state. This attempts to understand the angle that the base of the laptop is making with the surface it is being kept on
The disclosure describes a power control apparatus for a mobile device. The power control apparatus comprises an acceleration sensor and a controller. The acceleration sensor measures vibration generated due to movement of the mobile device and outputs a vibration measurement signal. The controller is configured to detect insertion condition of the mobile device inside a storage compartment based on the vibration measurement signal. The controller varies a power state of the mobile device upon detecting the insertion condition of the mobile device inside the storage compartment. Examples of the mobile device, includes but not limited to, a laptop computer, a palmtop computer, a mobile phone, a personal electronic device, and a personal digital assistant. The controller employs a Machine Learning (ML) model built using vibration measurement signals generated due to different movements and different positions of the mobile device, while inserting the mobile device inside the storage compartment.
The controller detects the insertion condition of the mobile device inside the storage compartment using the ML model. The controller varies the power state of the mobile device to a very low power state upon detecting the insertion condition of the mobile device inside the storage compartment. Examples of the storage compartment, include but not limited to, a bag, a briefcase, a suitcase, a pocket, a cabinet, and a pouch.
The disclosure describes a method for controlling a power state of a mobile device. The method involves measuring vibration generated due to movement of the mobile device by an acceleration sensor and outputting a vibration measurement signal. Insertion condition of the mobile device inside a storage compartment is detected by a controller based on the vibration measurement signal. Power state of the mobile device is varied by the controller upon detecting the insertion condition of the mobile device inside the storage compartment.
The insertion condition of the mobile device in the storage compartment is detected using a Machine Learning (ML) model. The ML model is built using vibration measurement signal generated due to different movements and positions of the mobile device, while inserting the mobile device inside the storage compartment. The power state of the mobile device is changed to a very low power state upon detecting the insertion condition of the mobile device inside the storage compartment.
An embodiment of the disclosure is described with reference to the following accompanying drawing.
The acceleration sensor 10 measures vibration generated due to movement of the mobile device 200 and outputs a vibration measurement signal. The vibration measurement signal may be generated along the 3 axes. In an embodiment of the invention, existing acceleration sensor 10 inside the mobile device 200 measures the vibration and outputs a vibration measurement signal.
The controller 20 receives and analyzes the vibration measurement signal, based on which the controller 20 detects insertion condition of the mobile device 200 inside a storage compartment. Examples of the storage compartment 50, include but not limited to, a bag, a briefcase, a suitcase, a pocket, a cabinet, and a pouch.
The controller 20 varies a power state of the mobile device 200 upon detecting the insertion condition of the mobile device 200 inside the storage compartment 50. The controller 20 employs an Artificial Intelligent (AI) model which is built using vibration measurement signals generated due to different movements and different positions of the mobile device 200, while inserting the mobile device 200 inside the storage compartment 50.
Various such vibration measurement signals with feature values generated during different positions, and postures while inserting the mobile device 200 inside a storage compartment 50 are captured, analyzed and used to build the ML model. The controller 20 detects the insertion condition of the mobile device 200 inside the storage compartment 50 using the ML model. The controller 20 varies the power state of the mobile device 200 to a very low power state upon detecting the insertion condition of the mobile device 200 inside the storage compartment 50. For instance, the controller 20 may close the applications opened in the mobile device 200, turn off the WiFi, switch to low brightness mode or even switch off the mobile device 200. The controller 20 waits for a threshold period after detecting the insertion condition of the mobile device 200 into the storage compartment 50, before switching to a low power state. This avoids frequent switching of power states and thereby improves power conservation and user's convenience.
Since different types of insertion of mobile device inside a storage compartment can be detected precisely, automatic switching to low power mode during non-use time can be achieved, thereby power saving is improved.
At step 410, insertion condition of the mobile device 200 inside a storage compartment is detected by a controller 20 based on the vibration measurement signal. When there is a transition in the mobile device 200, it is recognized by the controller based on the signal from the acceleration sensor 10. Upon analyzing the vibration measurement signal, the controller 20 checks if the mobile device 200 is being inserted in a storage compartment 50. At step 420, power state of the mobile device 200 is varied by the controller 20 upon detecting the insertion condition of the mobile device inside the storage compartment 50.
The insertion condition of the mobile device 200 in the storage compartment 50 is detected using a Machine Learning (ML) model. The ML model is built using vibration measurement signal generated due to different movements and positions of the mobile device 200, while inserting the mobile device 200 inside the storage compartment 50. The power state of the mobile device 50 is changed to a very low power state upon detecting the insertion condition of the mobile device 200 inside the storage compartment 50. The controller 20 waits for a threshold period after detecting the insertion condition of the mobile device 200 into the storage compartment 50, before switching to a low power state. This is done to avoid hasty decision and wrong switching of power state
The disclosure does not use any extra sensors like light sensor to detect the insertion of the mobile device into the storage compartment or bag. Thereby cost is reduced. Further, various ways of keeping the mobile device in the storage compartment is analyzed and used for building the ML model. Hence accuracy of the detecting the insertion condition of the mobile device in the storage compartment is improved.
It must be understood that the embodiments explained in the above detailed description are only illustrative and do not limit the scope of this invention. Any modification to the vandalism detection system using microphone and camera having artificial intelligence model and the method thereof are envisaged and form a part of this invention. The scope of this invention is limited only by the claims.
Number | Date | Country | Kind |
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2022 4103 7881 | Jun 2022 | IN | national |