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Saliency Detection Using Deep Features and Affinity-Based Robust Background Subtraction

Mehmood Nawaz, Hong Yan

2020IEEE Transactions on Multimedia29 citationsDOI

Abstract

Most existing saliency methods measure fore- ground saliency by using the contrast of a foreground region to its local context, or boundary priors and spatial compactness. These methods are not powerful enough to extract a precise salient region from noisy and cluttered backgrounds. To evaluate the contrast of salient and background regions effectively, we consider high-level features from both supervised and unsupervised methods. We propose an affinity-based robust background subtraction technique and maximum attention map using a pre-trained convolution neural network. This affinity-based technique uses pixel similarities to propagate the values of salient pixels among foreground and background regions and their union. The salient pixel value controls the foreground and background information by using multiple pixel affinities. The maximum attention map is derived from the convolution neural network using features of the Pooling and Relu layers. This method can detect salient regions from images that have noisy and cluttered backgrounds. Our experimental results demonstrate the effectiveness of the proposed approach on six different saliency data sets and benchmarks and show that it improves the quality of detection beyond current saliency detection methods.

Topics & Concepts

Artificial intelligenceComputer sciencePattern recognition (psychology)Background subtractionPixelSalientContrast (vision)Context (archaeology)Convolutional neural networkPoolingConvolution (computer science)Computer visionArtificial neural networkPaleontologyBiologyVisual Attention and Saliency DetectionOlfactory and Sensory Function StudiesAdvanced Image and Video Retrieval Techniques
Saliency Detection Using Deep Features and Affinity-Based Robust Background Subtraction | Litcius