共 21 条
DESEM: Depthwise Separable Convolution-Based Multimodal Deep Learning for In-Game Action Anticipation
被引:0
作者:
Kim, Changhyun
[1
]
Bae, Jinsoo
[1
]
Baek, Insung
[1
]
Jeong, Jaeyoon
[1
]
Lee, Young Jae
[1
]
Park, Kiwoong
[2
]
Shim, Sang Heun
[2
]
Kim, Seoung Bum
[1
]
机构:
[1] Korea Univ, Sch Ind & Management Engn, Seoul 02841, South Korea
[2] Agcy Def Dev ADD, Seoul 05771, South Korea
来源:
关键词:
Games;
Deep learning;
Feature extraction;
Convolutional neural networks;
Artificial intelligence;
Videos;
Forecasting;
Action anticipation;
depthwise separable convolution;
game artificial intelligence;
multimodal deep learning;
weighted loss function;
TIME STRATEGY GAME;
D O I:
10.1109/ACCESS.2023.3271282
中图分类号:
TP [自动化技术、计算机技术];
学科分类号:
0812 ;
摘要:
In real-time strategy (RTS) games, to defeat their opponents, players need to choose and implement the correct sequential actions. Because RTS games like StarCraft II are real-time, players have a very limited time to choose how to develop their strategy. In addition, players can only partially observe the parts of the map that they have explored. Therefore, unlike Chess or Go, players do not know what their opponents are doing. For these reasons, applying generally used artificial intelligence models to forecast sequential actions in RTS games is a challenge. To address this, we propose depthwise separable convolution-based multimodal deep learning (DESEM) for forecasting sequential actions in the game StarCraft II. DESEM performs multimodal learning using high-dimensional frames and action labels simultaneously as inputs. We use a depthwise separable convolution as the backbone network for extracting features from high-dimensional frames. In addition, we propose a weighted loss function to resolve class imbalances. We use 1,978 StarCraft II replays where the Terrans win in a Terran vs. Protoss game. The experimental results show that the proposed depthwise separable convolution is superior to the conventional convolution. Furthermore, we demonstrate that multimodal learning and the weighted loss function contribute significantly to improving forecasting performance.
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页码:46504 / 46512
页数:9