Food Ingredients Recognition through Multi-label Learning
The ability to recognize various food-items in a generic food plate is a key determinant for an automated diet assessment system. This study motivates the need for automated diet assessment and proposes a framework to achieve this. Within this framework, we focus on one of the core functionalities t...
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Zusammenfassung: | The ability to recognize various food-items in a generic food plate is a key
determinant for an automated diet assessment system. This study motivates the
need for automated diet assessment and proposes a framework to achieve this.
Within this framework, we focus on one of the core functionalities to visually
recognize various ingredients. To this end, we employed a deep multi-label
learning approach and evaluated several state-of-the-art neural networks for
their ability to detect an arbitrary number of ingredients in a dish image. The
models evaluated in this work follow a definite meta-structure, consisting of
an encoder and a decoder component. Two distinct decoding schemes, one based on
global average pooling and the other on attention mechanism, are evaluated and
benchmarked. Whereas for encoding, several well-known architectures, including
DenseNet, EfficientNet, MobileNet, Inception and Xception, were employed. We
present promising preliminary results for deep learning-based ingredients
detection, using a challenging dataset, Nutrition5K, and establish a strong
baseline for future explorations. |
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DOI: | 10.48550/arxiv.2210.14147 |