data_dir: data image_dir: images saliency_dir: saliency repo_id: "MarcoParola/saliency-evaluation" gui: max_img_examples: 16 experiments: exp1 results: save_dir: results exp1_dir: exp1 exp2_dir: exp2 dataset: name: intel_image path: data intel_image: n_classes: 6 class_names: ['BUILDING', 'FOREST', 'GLACIER', 'MOUNTAIN', 'SEA', 'STREET'] imagenette: n_classes: 10 class_names: ['tench', 'English springer', 'cassette player', 'chain saw', 'church', 'French horn', 'garbage truck', 'gas pump', 'golf ball', 'parachute'] saliency_methods: - gradcam - lime - sidu - rise