Computer vision using learnt lossy image compression representations

    公开(公告)号:US10984560B1

    公开(公告)日:2021-04-20

    申请号:US16370598

    申请日:2019-03-29

    Abstract: Techniques for performing learnt image compression and object detection using compressed image data are described. A system may perform image compression using an image compression model that includes an encoder, an entropy model, and a decoder. The encoder, the entropy model, and the decoder may be jointly trained using machine learning based on training data. After training, the encoder and the decoder may be separated to encode image data to generate compressed image data or to decode compressed image data to generate reconstructed image data. In addition, the system may perform object detection using a compressed object detection model that processes compressed image data generated by the image compression model. For example, the compressed object detection model may perform partial decoding using a single layer of the decoder and perform compressed object detection on the partially decoded image data.

    Determination of root causes of customer returns

    公开(公告)号:US11526665B1

    公开(公告)日:2022-12-13

    申请号:US16711216

    申请日:2019-12-11

    Abstract: Root cause estimation for a data set corresponding to customer returns of a product may use a probabilistic model to associate customer-entered product return data with probability distributions relating to possible root causes for the returns. A particular application relates to applying a Bayesian network to customer-selected return reason codes and customer-entered return reason comments to estimate a probability distribution for root causes of a plurality of returns and uncertainties relating to the probability distribution estimation. A bag-of-n-grams can be used to enable the Bayesian network to process natural language portions of the customer-entered product return data. The output of the model and other data relating to the root cause estimation can be conveyed to a seller of the returned products via a user interface.

    Identifying software products to test

    公开(公告)号:US10089661B1

    公开(公告)日:2018-10-02

    申请号:US15380664

    申请日:2016-12-15

    Abstract: Techniques are disclosed herein for identifying software products, available from an electronic marketplace, to be tested. Data associated with software products is accessed and analyzed to determine what software products to test. The data analyzed may include, but is not limited to, download data, crash data, ratings data, marketplace data, usage data, and the like. A machine learning mechanism may be used to predict a popularity of a software product, classify the application into a category relating to whether a potential anomaly is identified for the software product, and determine whether to test the software product. A score may also be calculated for the software products that indicates whether or not to test the software product. The predicted popularity, the classification and/or the score may be used to determine whether to perform further analysis or testing with regard to a software product. For instance, the score may be used to determine that the software product is to be tested by a testing service.

    Learned lossy image compression codec

    公开(公告)号:US10909728B1

    公开(公告)日:2021-02-02

    申请号:US16400900

    申请日:2019-05-01

    Abstract: Techniques for learned lossy image compression are described. A system may perform image compression using an image compression model that includes an encoder to compress an image and a decoder to reconstruct the image. The encoder and the decoder are trained using machine learning techniques. After training, the encoder can encode image data to generate compressed image data and the decoder can decode compressed image data to generate reconstructed image data.

    Hierarchical auto-regressive image compression system

    公开(公告)号:US10965948B1

    公开(公告)日:2021-03-30

    申请号:US16713910

    申请日:2019-12-13

    Abstract: The present application relates to a multi-stage encoder/decoder system that provides image compression using hierarchical auto-regressive models and saliency-based masks. The multi-stage encoder/decoder system includes a first stage and a second stage of a trained image compression network, such that the second stage, based on the image compression performed by the first stage, identify certain redundancies that can be removed from the bit string to reduce the storage and bandwidth requirements. Additionally, by using saliency-based masks, distortions in different sections of the image can be weighted differently to further improve the image compression performance.

    Reactively identifying software products exhibiting anomalous behavior

    公开(公告)号:US10380339B1

    公开(公告)日:2019-08-13

    申请号:US14727495

    申请日:2015-06-01

    Abstract: Techniques are disclosed herein for reactively identifying software products, available from an electronic marketplace, that are exhibiting anomalous behavior. Data associated with software products is accessed and analyzed to determine anomalous behavior. The data analyzed may include, but is not limited to, crash data, ratings data, marketplace data, usage data, and the like. A machine learning mechanism may be used to classify the application into a category relating to whether a potential anomaly is identified for the software product. A score may also be calculated for the software applications that indicates a severity of the anomalous behavior. The classification and/or the score may be used to determine whether to perform further analysis or testing with regard to a software product. For instance, the score may be used to determine that the software product is to be tested by a testing service.

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