2,241 research outputs found
Unsupervised Learning of Semantic Audio Representations
Even in the absence of any explicit semantic annotation, vast collections of
audio recordings provide valuable information for learning the categorical
structure of sounds. We consider several class-agnostic semantic constraints
that apply to unlabeled nonspeech audio: (i) noise and translations in time do
not change the underlying sound category, (ii) a mixture of two sound events
inherits the categories of the constituents, and (iii) the categories of events
in close temporal proximity are likely to be the same or related. Without
labels to ground them, these constraints are incompatible with classification
loss functions. However, they may still be leveraged to identify geometric
inequalities needed for triplet loss-based training of convolutional neural
networks. The result is low-dimensional embeddings of the input spectrograms
that recover 41% and 84% of the performance of their fully-supervised
counterparts when applied to downstream query-by-example sound retrieval and
sound event classification tasks, respectively. Moreover, in
limited-supervision settings, our unsupervised embeddings double the
state-of-the-art classification performance.Comment: Submitted to ICASSP 201
Multimodal One-Shot Learning of Speech and Images
Imagine a robot is shown new concepts visually together with spoken tags,
e.g. "milk", "eggs", "butter". After seeing one paired audio-visual example per
class, it is shown a new set of unseen instances of these objects, and asked to
pick the "milk". Without receiving any hard labels, could it learn to match the
new continuous speech input to the correct visual instance? Although unimodal
one-shot learning has been studied, where one labelled example in a single
modality is given per class, this example motivates multimodal one-shot
learning. Our main contribution is to formally define this task, and to propose
several baseline and advanced models. We use a dataset of paired spoken and
visual digits to specifically investigate recent advances in Siamese
convolutional neural networks. Our best Siamese model achieves twice the
accuracy of a nearest neighbour model using pixel-distance over images and
dynamic time warping over speech in 11-way cross-modal matching.Comment: 5 pages, 1 figure, 3 tables; accepted to ICASSP 201
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