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Main Authors: Soares, Gilson Junior, Cerqueira, Matheus Abrantes, Gomes, Jancarlo F., Najman, Laurent, Guimarães, Silvio Jamil F., Falcão, Alexandre Xavier
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.20872
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author Soares, Gilson Junior
Cerqueira, Matheus Abrantes
Gomes, Jancarlo F.
Najman, Laurent
Guimarães, Silvio Jamil F.
Falcão, Alexandre Xavier
author_facet Soares, Gilson Junior
Cerqueira, Matheus Abrantes
Gomes, Jancarlo F.
Najman, Laurent
Guimarães, Silvio Jamil F.
Falcão, Alexandre Xavier
contents Salient Object Detection (SOD) methods can locate objects that stand out in an image, assign higher values to their pixels in a saliency map, and binarize the map outputting a predicted segmentation mask. A recent tendency is to investigate pre-trained lightweight models rather than deep neural networks in SOD tasks, coping with applications under limited computational resources. In this context, we have investigated lightweight networks using a methodology named Feature Learning from Image Markers (FLIM), which assumes that the encoder's kernels can be estimated from marker pixels on discriminative regions of a few representative images. This work proposes flyweight networks, hundreds of times lighter than lightweight models, for SOD by combining a FLIM encoder with an adaptive decoder, whose weights are estimated for each input image by a given heuristic function. Such FLIM networks are trained from three to four representative images only and without backpropagation, making the models suitable for applications under labeled data constraints as well. We study five adaptive decoders; two of them are introduced here. Differently from the previous ones that rely on one neuron per pixel with shared weights, the heuristic functions of the new adaptive decoders estimate the weights of each neuron per pixel. We compare FLIM models with adaptive decoders for two challenging SOD tasks with three lightweight networks from the state-of-the-art, two FLIM networks with decoders trained by backpropagation, and one FLIM network whose labeled markers define the decoder's weights. The experiments demonstrate the advantages of the proposed networks over the baselines, revealing the importance of further investigating such methods in new applications.
format Preprint
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publishDate 2025
record_format arxiv
spellingShingle FLIM-based Salient Object Detection Networks with Adaptive Decoders
Soares, Gilson Junior
Cerqueira, Matheus Abrantes
Gomes, Jancarlo F.
Najman, Laurent
Guimarães, Silvio Jamil F.
Falcão, Alexandre Xavier
Computer Vision and Pattern Recognition
Salient Object Detection (SOD) methods can locate objects that stand out in an image, assign higher values to their pixels in a saliency map, and binarize the map outputting a predicted segmentation mask. A recent tendency is to investigate pre-trained lightweight models rather than deep neural networks in SOD tasks, coping with applications under limited computational resources. In this context, we have investigated lightweight networks using a methodology named Feature Learning from Image Markers (FLIM), which assumes that the encoder's kernels can be estimated from marker pixels on discriminative regions of a few representative images. This work proposes flyweight networks, hundreds of times lighter than lightweight models, for SOD by combining a FLIM encoder with an adaptive decoder, whose weights are estimated for each input image by a given heuristic function. Such FLIM networks are trained from three to four representative images only and without backpropagation, making the models suitable for applications under labeled data constraints as well. We study five adaptive decoders; two of them are introduced here. Differently from the previous ones that rely on one neuron per pixel with shared weights, the heuristic functions of the new adaptive decoders estimate the weights of each neuron per pixel. We compare FLIM models with adaptive decoders for two challenging SOD tasks with three lightweight networks from the state-of-the-art, two FLIM networks with decoders trained by backpropagation, and one FLIM network whose labeled markers define the decoder's weights. The experiments demonstrate the advantages of the proposed networks over the baselines, revealing the importance of further investigating such methods in new applications.
title FLIM-based Salient Object Detection Networks with Adaptive Decoders
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.20872