TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Deep-Energy: Unsupervised Training of Deep Neural Networks

Deep-Energy: Unsupervised Training of Deep Neural Networks

Alona Golts, Daniel Freedman, Michael Elad

2018-05-31Image MattingImage DehazingSingle Image Dehazing
PaperPDFCode

Abstract

The success of deep learning has been due, in no small part, to the availability of large annotated datasets. Thus, a major bottleneck in current learning pipelines is the time-consuming human annotation of data. In scenarios where such input-output pairs cannot be collected, simulation is often used instead, leading to a domain-shift between synthesized and real-world data. This work offers an unsupervised alternative that relies on the availability of task-specific energy functions, replacing the generic supervised loss. Such energy functions are assumed to lead to the desired label as their minimizer given the input. The proposed approach, termed "Deep Energy", trains a Deep Neural Network (DNN) to approximate this minimization for any chosen input. Once trained, a simple and fast feed-forward computation provides the inferred label. This approach allows us to perform unsupervised training of DNNs with real-world inputs only, and without the need for manually-annotated labels, nor synthetically created data. "Deep Energy" is demonstrated in this paper on three different tasks -- seeded segmentation, image matting and single image dehazing -- exposing its generality and wide applicability. Our experiments show that the solution provided by the network is often much better in quality than the one obtained by a direct minimization of the energy function, suggesting an added regularization property in our scheme.

Results

TaskDatasetMetricValueModel
DehazingSOTS OutdoorPSNR24.07Deep Energy (Network)
DehazingSOTS OutdoorSSIM0.933Deep Energy (Network)
Image DehazingSOTS OutdoorPSNR24.07Deep Energy (Network)
Image DehazingSOTS OutdoorSSIM0.933Deep Energy (Network)

Related Papers

Post-Training Quantization for Video Matting2025-06-12A PDE-Based Image Dehazing Method via Atmospheric Scattering Theory2025-06-10Forward-only Diffusion Probabilistic Models2025-05-22UHD Image Dehazing via anDehazeFormer with Atmospheric-aware KV Cache2025-05-20Degradation-Aware Feature Perturbation for All-in-One Image Restoration2025-05-19A Preliminary Study for GPT-4o on Image Restoration2025-05-08WDMamba: When Wavelet Degradation Prior Meets Vision Mamba for Image Dehazing2025-05-07Fine-Tuning Adversarially-Robust Transformers for Single-Image Dehazing2025-04-24