Clothes dryer with improved moisture sensing and wireless data transfer
US-2015368853-A1 · Dec 24, 2015 · US
US2021363680A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2021363680-A1 |
| Application number | US-201916603815-A |
| Country | US |
| Kind code | A1 |
| Filing date | Jun 28, 2019 |
| Priority date | Jun 28, 2019 |
| Publication date | Nov 25, 2021 |
| Grant date | — |
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Disclosed is an artificial intelligence (AI)-based self-control air conditioner. The AI-based self-control air conditioner includes a communication unit configured to receive an image including member data for identifying the member from an image acquisition apparatus corresponding to a group including at least one member, and a processor configured to recognize the member data from the received image, to acquire operation data including an operation condition of an air conditioner, which is desired by the member, based on the recognized data, to store member information including the member data and the operation data in a database, and to acquire and analyze the operation condition of the air conditioner, which is desired by the member, with respect to at least one member from a plurality of pieces of member information corresponding to the group stored in the database, wherein the air conditioner is autonomously driven according to control of the processor. Accordingly, the air conditioner learns members itself and controls an operation in an optimum state to reduce power consumption and is driven according to an operation condition set for each member to enhance personal convenience of the member.
Opening claim text (preview).
What is claimed is: 1 . An artificial intelligence (AI)-based laundry course recommending apparatus comprising: a detector configured to classify at least one laundry inside a washing machine into a plurality of regions and to photograph the plurality of regions at a plurality of angles, respectively, to acquire at least one image related to a type and a material of the laundry; and a processor configured to acquire laundry information on the type and material of the laundry from the image, to store the laundry information in a database, and to compare a plurality of pieces of laundry information corresponding to the plurality of regions, which is stored in the database, with laundry data and laundry course pre-input by a user, and to extract a laundry course of the at least one laundry. 2 . The AI-based laundry course recommending apparatus of claim 1 , wherein the detector further includes: a camera configured to photograph the plurality of regions of the laundry at a plurality of angles, respectively; and a lighting configured to provide a light source to acquire the image during photograph of the camera. 3 . The AI-based laundry course recommending apparatus of claim 2 , wherein the lighting is installed on an upper portion of the washing machine to maintain predetermined illumination in the laundry distributed on the plurality of regions, and is operated while the detector acquires the image. 4 . The AI-based laundry course recommending apparatus of claim 1 , wherein the processor extracts at least one laundry course to be applied to the laundry information, applies a score to suitability of the laundry information and the at least one laundry course, and extracts a laundry course with a highest score. 5 . The AI-based laundry course recommending apparatus of claim 1 , wherein the processor classifies the laundry information distributed on the plurality of regions, compares the laundry information with the laundry data to calculate similarity therebetween, and extracts a laundry course corresponding to laundry data with a highest similarity. 6 . The AI-based laundry course recommending apparatus of claim 1 , wherein the processor extracts the plurality of regions from the image, infers the laundry information through a convolutional neural network (CNN) of the laundry distributed on the plurality of regions, and extracts a pre-learned laundry course corresponding to the laundry information. 7 . The AI-based laundry course recommending apparatus of claim 1 , further comprising a memory configured to store a laundry data recognition model that is learned using a machine learning or deep learning algorithm and is used to recognize the laundry information from the image. 8 . The AI-based laundry course recommending apparatus of claim 1 , wherein the processor further includes a controller configured to control the washing machine according to any one of a laundry course that is manually input by the user or a laundry course that is automatically extracted. 9 . A control method of an artificial intelligence (AI)-based laundry course recommending apparatus, the method comprising: a first operation of classifying at least one laundry inside a washing machine into a plurality of regions and photographing the plurality of regions at a plurality of angles, respectively, to acquire at least one image related to a type and a material of the laundry; a second operation of acquiring laundry information on the type and material of the laundry from the image and storing the laundry information in a database; and a third operation of comparing a plurality of pieces of laundry information corresponding to the plurality of regions, which is stored in the database, with laundry data and laundry course pre-input by a user, and extracting a laundry course of the at least one laundry. 10 . The method of claim 9 , wherein the first operation includes receiving at least one still image or video image indicating the type and material of the laundry from the user or a mobile device of the user. 11 . The method of claim 9 , wherein the second operation includes: classifying the laundry into the plurality of regions; generating laundry information by matching with a type and a material corresponding to the plurality of regions; and storing a result in the database by matching the laundry and the laundry information corresponding to the plurality of regions. 12 . The method of claim 9 , wherein the third operation includes: extracting at least one laundry course to be applied to the laundry information; applying a score to suitability of the laundry information and the at least one laundry course; and extracting a laundry course with a highest score. 13 . The method of claim 9 , wherein the third operation includes: classifying the laundry information distributed on the plurality of regions; comparing the laundry information with the laundry data to calculate similarity therebetween; and extracting a laundry course corresponding to laundry data with a highest similarity. 14 . The method of claim 9 , wherein the third operation includes: applying a convolutional neural network (CNN) of the laundry distributed on the plurality of regions to infer the laundry information; and extracting a pre-learned laundry course corresponding to the laundry information. 15 . The method of claim 9 , further comprising controlling the washing machine according to any one of a laundry course that is manually input by the user or a laundry course that is automatically extracted.
Condition of the laundry, e.g. nature or weight · CPC title
Control of operational steps, e.g. optimisation or improvement of operational steps depending on the condition of the laundry · CPC title
Surveillance or monitoring of activities, e.g. for recognising suspicious objects (recognising microscopic objects G06V20/69) · CPC title
using neural networks · CPC title
using classification, e.g. of video objects · CPC title
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