GIC-DLC: Differentiable Logic Circuits for Hardware-Friendly Grayscale Image Compression
About
Neural image codecs achieve higher compression ratios than traditional hand-crafted methods such as PNG or JPEG-XL, but often incur substantial computational overhead, limiting their deployment on energy-constrained devices such as smartphones, cameras, and drones. We propose Grayscale Image Compression with Differentiable Logic Circuits (GIC-DLC), a hardware-aware codec where we train lookup tables to combine the flexibility of neural networks with the efficiency of Boolean operations. Experiments on grayscale benchmark datasets show that GIC-DLC outperforms traditional codecs in compression efficiency while allowing substantial reductions in energy consumption and latency. These results demonstrate that learned compression can be hardware-friendly, offering a promising direction for low-power image compression on edge devices.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Lossless Image Compression | EMNIST ByClass (test) | Bits Per Pixel (BPP)2.71 | 12 | |
| Lossless Image Compression | EMNIST ByClass letters (test) | Bits Per Pixel2.78 | 6 | |
| Lossless Image Compression | KMNIST (test) | BPP4.16 | 6 | |
| Lossless Image Compression | Fashion-MNIST (FMNIST) (test) | Bits Per Pixel6.27 | 6 |