Group Activity Recognition in Basketball Tracking Data – Neural Embeddings in Team Sports (NETS)

08/31/2022
by   Sandro Hauri, et al.
0

Like many team sports, basketball involves two groups of players who engage in collaborative and adversarial activities to win a game. Players and teams are executing various complex strategies to gain an advantage over their opponents. Defining, identifying, and analyzing different types of activities is an important task in sports analytics, as it can lead to better strategies and decisions by the players and coaching staff. The objective of this paper is to automatically recognize basketball group activities from tracking data representing locations of players and the ball during a game. We propose a novel deep learning approach for group activity recognition (GAR) in team sports called NETS. To efficiently model the player relations in team sports, we combined a Transformer-based architecture with LSTM embedding, and a team-wise pooling layer to recognize the group activity. Training such a neural network generally requires a large amount of annotated data, which incurs high labeling cost. To address scarcity of manual labels, we generate weak-labels and pretrain the neural network on a self-supervised trajectory prediction task. We used a large tracking data set from 632 NBA games to evaluate our approach. The results show that NETS is capable of learning group activities with high accuracy, and that self- and weak-supervised training in NETS have a positive impact on GAR accuracy.

READ FULL TEXT
research
07/01/2019

Associative Embedding for Game-Agnostic Team Discrimination

Assigning team labels to players in a sport game is not a trivial task w...
research
04/21/2020

Group Activity Detection from Trajectory and Video Data in Soccer

Group activity detection in soccer can be done by using either video dat...
research
06/12/2015

Deep Structured Models For Group Activity Recognition

This paper presents a deep neural-network-based hierarchical graphical m...
research
11/20/2020

Self-Supervised Small Soccer Player Detection and Tracking

In a soccer game, the information provided by detecting and tracking bri...
research
04/25/2014

Indoor Activity Detection and Recognition for Sport Games Analysis

Activity recognition in sport is an attractive field for computer vision...
research
08/14/2018

SciSports: Learning football kinematics through two-dimensional tracking data

SciSports is a Dutch startup company specializing in football analytics....
research
04/08/2022

Efficient tracking of team sport players with few game-specific annotations

One of the requirements for team sports analysis is to track and recogni...

Please sign up or login with your details

Forgot password? Click here to reset