683 research outputs found
Linking Image and Text with 2-Way Nets
Linking two data sources is a basic building block in numerous computer
vision problems. Canonical Correlation Analysis (CCA) achieves this by
utilizing a linear optimizer in order to maximize the correlation between the
two views. Recent work makes use of non-linear models, including deep learning
techniques, that optimize the CCA loss in some feature space. In this paper, we
introduce a novel, bi-directional neural network architecture for the task of
matching vectors from two data sources. Our approach employs two tied neural
network channels that project the two views into a common, maximally correlated
space using the Euclidean loss. We show a direct link between the
correlation-based loss and Euclidean loss, enabling the use of Euclidean loss
for correlation maximization. To overcome common Euclidean regression
optimization problems, we modify well-known techniques to our problem,
including batch normalization and dropout. We show state of the art results on
a number of computer vision matching tasks including MNIST image matching and
sentence-image matching on the Flickr8k, Flickr30k and COCO datasets.Comment: 14 pages, 2 figures, 6 table
Unveiling the Potential of Probabilistic Embeddings in Self-Supervised Learning
In recent years, self-supervised learning has played a pivotal role in
advancing machine learning by allowing models to acquire meaningful
representations from unlabeled data. An intriguing research avenue involves
developing self-supervised models within an information-theoretic framework,
but many studies often deviate from the stochasticity assumptions made when
deriving their objectives. To gain deeper insights into this issue, we propose
to explicitly model the representation with stochastic embeddings and assess
their effects on performance, information compression and potential for
out-of-distribution detection. From an information-theoretic perspective, we
seek to investigate the impact of probabilistic modeling on the information
bottleneck, shedding light on a trade-off between compression and preservation
of information in both representation and loss space. Emphasizing the
importance of distinguishing between these two spaces, we demonstrate how
constraining one can affect the other, potentially leading to performance
degradation. Moreover, our findings suggest that introducing an additional
bottleneck in the loss space can significantly enhance the ability to detect
out-of-distribution examples, only leveraging either representation features or
the variance of their underlying distribution.Comment: Under review by AISTATS 202
System approach to robust acoustic echo cancellation through semi-blind source separation based on independent component analysis
We live in a dynamic world full of noises and interferences. The conventional acoustic echo cancellation (AEC) framework based on the least mean square (LMS) algorithm by itself lacks the ability to handle many secondary signals that interfere with the adaptive filtering process, e.g., local speech and background noise. In this dissertation, we build a foundation for what we refer to as the system approach to signal enhancement as we focus on the AEC problem.
We first propose the residual echo enhancement (REE) technique that utilizes the error recovery nonlinearity (ERN) to "enhances" the filter estimation error prior to the filter adaptation. The single-channel AEC problem can be viewed as a special case of semi-blind source separation (SBSS) where one of the source signals is partially known, i.e., the far-end microphone signal that generates the near-end acoustic echo. SBSS optimized via independent component analysis (ICA) leads to the system combination of the LMS algorithm with the ERN that allows for continuous and stable adaptation even during double talk. Second, we extend the system perspective to the decorrelation problem for AEC, where we show that the REE procedure can be applied effectively in a multi-channel AEC (MCAEC) setting to indirectly assist the recovery of lost AEC performance due to inter-channel correlation, known generally as the "non-uniqueness" problem. We develop a novel, computationally efficient technique of frequency-domain resampling (FDR) that effectively alleviates the non-uniqueness problem directly while introducing minimal distortion to signal quality and statistics. We also apply the system approach to the multi-delay filter (MDF) that suffers from the inter-block correlation problem. Finally, we generalize the MCAEC problem in the SBSS framework and discuss many issues related to the implementation of an SBSS system. We propose a constrained batch-online implementation of SBSS that stabilizes the convergence behavior even in the worst case scenario of a single far-end talker along with the non-uniqueness condition on the far-end mixing system.
The proposed techniques are developed from a pragmatic standpoint, motivated by real-world problems in acoustic and audio signal processing. Generalization of the orthogonality principle to the system level of an AEC problem allows us to relate AEC to source separation that seeks to maximize the independence, hence implicitly the orthogonality, not only between the error signal and the far-end signal, but rather, among all signals involved. The system approach, for which the REE paradigm is just one realization, enables the encompassing of many traditional signal enhancement techniques in analytically consistent yet practically effective manner for solving the enhancement problem in a very noisy and disruptive acoustic mixing environment.PhDCommittee Chair: Biing-Hwang Juang; Committee Member: Brani Vidakovic; Committee Member: David V. Anderson; Committee Member: Jeff S. Shamma; Committee Member: Xiaoli M
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