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      Machine Vision and Big Data-Driven Sports Athletes Action Training Intervention Model

      1 , 2 , 3 , 4
      Scientific Programming
      Hindawi Limited

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          Abstract

          In recent years, athlete action recognition has become an important research field for showing and recognition of athlete actions. Generally speaking, movement recognition of athletes can be performed through a variety of modes, such as motion sensors, machine vision, and big data analysis. Among them, machine vision and big data analysis usually contain significant information which can be used for various purposes. Machine vision can be expressed as the recognition of the time sequence of a series of athlete actions captured through camera, so that it can intervene in the training of athletes by visual methods and approaches. Big data contains a large number of athletes’ historical training and competition data which need exploration. In-depth analysis and feature mining of big data will help coach teams to develop training plans and devise new suggestions. On the basis of the above observations, this paper proposes a novel spatiotemporal attention map convolutional network to identify athletes’ actions, and through the auxiliary analysis of big data, gives reasonable action intervention suggestions, and provides coaches and decision-making teams to formulate scientific training programs. Results of the study show the effectiveness of the proposed research.

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          A cross-domain collaborative filtering algorithm with expanding user and item features via the latent factor space of auxiliary domains

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            SVMs Classification Based Two-side Cross Domain Collaborative Filtering by inferring intrinsic user and item features

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              An Improved Encoder-Decoder Network Based on Strip Pool Method Applied to Segmentation of Farmland Vacancy Field

              In the research of green vegetation coverage in the field of remote sensing image segmentation, crop planting area is often obtained by semantic segmentation of images taken from high altitude. This method can be used to obtain the rate of cultivated land in a region (such as a country), but it does not reflect the real situation of a particular farmland. Therefore, this paper takes low-altitude images of farmland to build a dataset. After comparing several mainstream semantic segmentation algorithms, a new method that is more suitable for farmland vacancy segmentation is proposed. Additionally, the Strip Pooling module (SPM) and the Mixed Pooling module (MPM), with strip pooling as their core, are designed and fused into the semantic segmentation network structure to better extract the vacancy features. Considering the high cost of manual data annotation, this paper uses an improved ResNet network as the backbone of signal transmission, and meanwhile uses data augmentation to improve the performance and robustness of the model. As a result, the accuracy of the proposed method in the test set is 95.6%, mIoU is 77.6%, and the error rate is 7%. Compared to the existing model, the mIoU value is improved by nearly 4%, reaching the level of practical application.
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                Author and article information

                Contributors
                (View ORCID Profile)
                Journal
                Scientific Programming
                Scientific Programming
                Hindawi Limited
                1875-919X
                1058-9244
                May 15 2021
                May 15 2021
                : 2021
                : 1-10
                Affiliations
                [1 ]Institute of Physical Education, Dezhou University, Dezhou 253023, Shandong, China
                [2 ]Baoding Vocational and Technical College, Baoding, 071000, China
                [3 ]College of Physical Education, Hengshui University, Hengshui 053000, Hebei, China
                [4 ]Sports Department of Hebei Vocational College of Rail Transportation, Tianjin, Hebei, China
                Article
                10.1155/2021/9956710
                470c919b-37d9-49ef-bf92-bbfae0a6f231
                © 2021

                https://creativecommons.org/licenses/by/4.0/

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