4.6 Article

When CNNs meet random RNNs: Towards multi-level analysis for RGB-D object and scene recognition

Journal

COMPUTER VISION AND IMAGE UNDERSTANDING
Volume 217, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.cviu.2022.103373

Keywords

Convolutional Neural Networks; Randomized neural networks; Transfer learning; RGB-D object recognition; RGB-D scene recognition

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This paper proposes a two-stage framework based on multi-modal RGB-D images for object and scene recognition tasks. In the first stage, a pretrained CNN model is used to extract visual features at multiple levels, and in the second stage, a fully randomized structure of RNNs is employed to map these features into high level representations. Multi-modal fusion is achieved through a soft voting approach, resulting in consistent class label estimation.
Recognizing objects and scenes are two challenging but essential tasks in image understanding. In particular, the use of RGB-D sensors in handling these tasks has emerged as an important area of focus for better visual understanding. Meanwhile, deep neural networks, specifically convolutional neural networks (CNNs), have become widespread and have been applied to many visual tasks by replacing hand-crafted features with effective deep features. However, it is an open problem how to exploit deep features from a multi-layer CNN model effectively. In this paper, we propose a novel two-stage framework that extracts discriminative feature representations from multi-modal RGB-D images for object and scene recognition tasks. In the first stage, a pretrained CNN model has been employed as a backbone to extract visual features at multiple levels. The second stage maps these features into high level representations with a fully randomized structure of recursive neural networks (RNNs) efficiently. To cope with the high dimensionality of CNN activations, a random weighted pooling scheme has been proposed by extending the idea of randomness in RNNs. Multi modal fusion has been performed through a soft voting approach by computing weights based on individual recognition confidences (i.e. SVM scores) of RGB and depth streams separately. This produces consistent class label estimation in final RGB-D classification performance. Extensive experiments verify that fully randomized structure in RNN stage encodes CNN activations to discriminative solid features successfully. Comparative experimental results on the popular Washington RGB-D Object and SUN RGB-D Scene datasets show that the proposed approach achieves superior or on-par performance compared to state-of-the-art methods both in object and scene recognition tasks. Code is available at https://github.com/acaglayan/CNN_randRNN.

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