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Papers/Widely Applicable Strong Baseline for Sports Ball Detectio...

Widely Applicable Strong Baseline for Sports Ball Detection and Tracking

Shuhei Tarashima, Muhammad Abdul Haq, Yushan Wang, Norio Tagawa

2023-11-09Sports Ball Detection and Tracking
PaperPDFCode(official)

Abstract

In this work, we present a novel Sports Ball Detection and Tracking (SBDT) method that can be applied to various sports categories. Our approach is composed of (1) high-resolution feature extraction, (2) position-aware model training, and (3) inference considering temporal consistency, all of which are put together as a new SBDT baseline. Besides, to validate the wide-applicability of our approach, we compare our baseline with 6 state-of-the-art SBDT methods on 5 datasets from different sports categories. We achieve this by newly introducing two SBDT datasets, providing new ball annotations for two datasets, and re-implementing all the methods to ease extensive comparison. Experimental results demonstrate that our approach is substantially superior to existing methods on all the sports categories covered by the datasets. We believe our proposed method can play as a Widely Applicable Strong Baseline (WASB) of SBDT, and our datasets and codebase will promote future SBDT research. Datasets and codes are available at https://github.com/nttcom/WASB-SBDT .

Results

TaskDatasetMetricValueModel
Object TrackingTennisAccuracy (%)91.8WASB (Step=1)
Object TrackingTennisAverage Precision (%)94.2WASB (Step=1)
Object TrackingTennisF1 (%)95.6WASB (Step=1)
Object TrackingTennisAccuracy (%)89WASB (Step=3)
Object TrackingTennisAverage Precision (%)91WASB (Step=3)
Object TrackingTennisF1 (%)94WASB (Step=3)
Object TrackingTennisAccuracy (%)82.8ResTrackNetV2
Object TrackingTennisAverage Precision (%)81.7ResTrackNetV2
Object TrackingTennisF1 (%)90.3ResTrackNetV2
Object TrackingTennisAccuracy (%)31.6DeepBall-Large
Object TrackingTennisAverage Precision (%)35.1DeepBall-Large
Object TrackingTennisF1 (%)46.7DeepBall-Large
Object TrackingSoccerAccuracy (% )97.9WASB (Step=3)
Object TrackingSoccerAverage Precision (%)83.6WASB (Step=3)
Object TrackingSoccerF1 (%)88.3WASB (Step=3)
Object TrackingSoccerAccuracy (% )97.9WASB (Step=1)
Object TrackingSoccerAverage Precision (%)86.2WASB (Step=1)
Object TrackingSoccerF1 (%)88.2WASB (Step=1)
Object TrackingSoccerAccuracy (% )97.4ResTrackNetV2
Object TrackingSoccerAverage Precision (%)75.5ResTrackNetV2
Object TrackingSoccerF1 (%)84.6ResTrackNetV2
Object TrackingSoccerAccuracy (% )89.5DeepBall-Large
Object TrackingSoccerAverage Precision (%)34DeepBall-Large
Object TrackingSoccerF1 (%)44.9DeepBall-Large
Object TrackingBadmintonAccuracy (%)89WASB (Step=1)
Object TrackingBadmintonAverage Precision (%)91.6WASB (Step=1)
Object TrackingBadmintonF1 (%)93.1WASB (Step=1)
Object TrackingBadmintonAccuracy (%)87WASB (Step=3)
Object TrackingBadmintonAverage Precision (%)88.5WASB (Step=3)
Object TrackingBadmintonF1 (%)91.6WASB (Step=3)
Object TrackingBadmintonAccuracy (%)84ResTrackNetV2
Object TrackingBadmintonAverage Precision (%)82.2ResTrackNetV2
Object TrackingBadmintonF1 (%)89.4ResTrackNetV2
Object TrackingBadmintonAccuracy (%)36.8DeepBall-Large
Object TrackingBadmintonAverage Precision (%)59.5DeepBall-Large
Object TrackingBadmintonF1 (%)50.6DeepBall-Large
Object TrackingVolleyballAccuracy (%)80WASB (Step=1)
Object TrackingVolleyballAverage Precision (%)83.2WASB (Step=1)
Object TrackingVolleyballF1 (%)88WASB (Step=1)
Object TrackingVolleyballAccuracy (%)77.9WASB (Step=3)
Object TrackingVolleyballAverage Precision (%)79.9WASB (Step=3)
Object TrackingVolleyballF1 (%)86.5WASB (Step=3)
Object TrackingVolleyballAccuracy (%)74.7ResTrackNetV2
Object TrackingVolleyballAverage Precision (%)74.7ResTrackNetV2
Object TrackingVolleyballF1 (%)84.2ResTrackNetV2
Object TrackingVolleyballAccuracy (%)57.5DeepBall-Large
Object TrackingVolleyballAverage Precision (%)56.5DeepBall-Large
Object TrackingVolleyballF1 (%)70.4DeepBall-Large
Object TrackingBasketballAccuracy (%)73.4WASB (Step=1)
Object TrackingBasketballAverage Precision (%)77.1WASB (Step=1)
Object TrackingBasketballF1 (%)82.6WASB (Step=1)
Object TrackingBasketballAccuracy (%)71.3WASB (Step=3)
Object TrackingBasketballAverage Precision (%)71.5WASB (Step=3)
Object TrackingBasketballF1 (%)80.6WASB (Step=3)
Object TrackingBasketballAccuracy (%)68.2ResTrackNetV2
Object TrackingBasketballAverage Precision (%)66ResTrackNetV2
Object TrackingBasketballF1 (%)77.9ResTrackNetV2
Object TrackingBasketballAccuracy (%)47.5DeepBall-Large
Object TrackingBasketballAverage Precision (%)36.6DeepBall-Large
Object TrackingBasketballF1 (%)57.2DeepBall-Large

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