Imitation Learning Inputting Image Feature to Each Layer of Neural Network
Imitation learning enables robots to learn and replicate human behavior from training data. Recent advances in machine learning enable end-to-end learning approaches that directly process high-dimensional observation data, such as images. However, these approaches face a critical challenge when proc...
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Zusammenfassung: | Imitation learning enables robots to learn and replicate human behavior from
training data. Recent advances in machine learning enable end-to-end learning
approaches that directly process high-dimensional observation data, such as
images. However, these approaches face a critical challenge when processing
data from multiple modalities, inadvertently ignoring data with a lower
correlation to the desired output, especially when using short sampling
periods. This paper presents a useful method to address this challenge, which
amplifies the influence of data with a relatively low correlation to the output
by inputting the data into each neural network layer. The proposed approach
effectively incorporates diverse data sources into the learning process.
Through experiments using a simple pick-and-place operation with raw images and
joint information as input, significant improvements in success rates are
demonstrated even when dealing with data from short sampling periods. |
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DOI: | 10.48550/arxiv.2401.09691 |