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[i] DeepLabv3+@ResNet-50@Fix@GN [i] mean values is [0.485, 0.456, 0.406] [i] std values is [0.229, 0.224, 0.225] [i] The number of class is 20 [i] train_transform is Compose( <tools.ai.augment_utils.RandomResize_For_Segmentation object at 0x7a0c41d09750> <tools.ai.augment_utils.RandomHorizontalFlip_For_Segmentation object at 0x7a0c41d09720> <tools.ai.augment_utils.Normalize_For_Segmentation object at 0x7a0c41d097e0> <tools.ai.augment_utils.RandomCrop_For_Segmentation object at 0x7a0c41d09870> <tools.ai.augment_utils.Transpose_For_Segmentation object at 0x7a0c41d098d0> ) [i] log_iteration : 66 [i] val_iteration : 661 [i] max_iteration : 9,915 [i] Architecture is DeepLabv3+ [i] Total Params: 40.35M [i] iteration=66, learning_rate=0.0070, loss=1.6635, time=18sec [i] iteration=132, learning_rate=0.0069, loss=1.1385, time=17sec [i] iteration=198, learning_rate=0.0069, loss=0.9417, time=17sec [i] iteration=264, learning_rate=0.0068, loss=0.8400, time=17sec [i] iteration=330, learning_rate=0.0068, loss=0.7766, time=17sec [i] iteration=396, learning_rate=0.0067, loss=0.6704, time=17sec [i] iteration=462, learning_rate=0.0067, loss=0.6700, time=17sec [i] iteration=528, learning_rate=0.0067, loss=0.6208, time=17sec [i] iteration=594, learning_rate=0.0066, loss=0.6388, time=17sec [i] iteration=660, learning_rate=0.0066, loss=0.6167, time=17sec [i] DeepLabv3+@ResNet-50@Fix@GN [i] mean values is [0.485, 0.456, 0.406] [i] std values is [0.229, 0.224, 0.225] [i] The number of class is 20 [i] train_transform is Compose( <tools.ai.augment_utils.RandomResize_For_Segmentation object at 0x7b724931be20> <tools.ai.augment_utils.RandomHorizontalFlip_For_Segmentation object at 0x7b724931bd60> <tools.ai.augment_utils.Normalize_For_Segmentation object at 0x7b724931bdc0> <tools.ai.augment_utils.RandomCrop_For_Segmentation object at 0x7b724931be50> <tools.ai.augment_utils.Transpose_For_Segmentation object at 0x7b724931beb0> ) [i] log_iteration : 66 [i] val_iteration : 661 [i] max_iteration : 9,915 [i] Architecture is DeepLabv3+ [i] Total Params: 40.35M [i] iteration=66, learning_rate=0.0070, loss=1.6640, time=18sec [i] iteration=132, learning_rate=0.0069, loss=1.1375, time=17sec [i] iteration=198, learning_rate=0.0069, loss=0.9249, time=17sec [i] iteration=264, learning_rate=0.0068, loss=0.7839, time=17sec [i] iteration=330, learning_rate=0.0068, loss=0.8084, time=17sec [i] iteration=396, learning_rate=0.0067, loss=0.6803, time=17sec [i] iteration=462, learning_rate=0.0067, loss=0.6661, time=17sec [i] iteration=528, learning_rate=0.0067, loss=0.6199, time=17sec [i] iteration=594, learning_rate=0.0066, loss=0.6303, time=17sec [i] iteration=660, learning_rate=0.0066, loss=0.6040, time=17sec [i] save model [i] iteration=661, mIoU=40.20%, best_valid_mIoU=40.20%, time=38sec [i] iteration=726, learning_rate=0.0065, loss=0.5300, time=55sec [i] iteration=792, learning_rate=0.0065, loss=0.5670, time=17sec [i] iteration=858, learning_rate=0.0065, loss=0.5230, time=17sec [i] iteration=924, learning_rate=0.0064, loss=0.5736, time=17sec [i] iteration=990, learning_rate=0.0064, loss=0.5719, time=17sec [i] iteration=1,056, learning_rate=0.0063, loss=0.5016, time=17sec [i] iteration=1,122, learning_rate=0.0063, loss=0.5114, time=17sec [i] iteration=1,188, learning_rate=0.0062, loss=0.5154, time=17sec [i] iteration=1,254, learning_rate=0.0062, loss=0.4591, time=17sec [i] iteration=1,320, learning_rate=0.0062, loss=0.5086, time=17sec [i] save model [i] iteration=1,322, mIoU=46.93%, best_valid_mIoU=46.93%, time=38sec [i] iteration=1,386, learning_rate=0.0061, loss=0.4478, time=56sec [i] iteration=1,452, learning_rate=0.0061, loss=0.4730, time=17sec [i] iteration=1,518, learning_rate=0.0060, loss=0.5368, time=17sec [i] iteration=1,584, learning_rate=0.0060, loss=0.4908, time=17sec [i] iteration=1,650, learning_rate=0.0059, loss=0.4658, time=17sec [i] iteration=1,716, learning_rate=0.0059, loss=0.5231, time=17sec [i] iteration=1,782, learning_rate=0.0059, loss=0.4553, time=17sec [i] iteration=1,848, learning_rate=0.0058, loss=0.4160, time=17sec [i] iteration=1,914, learning_rate=0.0058, loss=0.4270, time=17sec [i] iteration=1,980, learning_rate=0.0057, loss=0.4344, time=17sec [i] save model [i] iteration=1,983, mIoU=50.79%, best_valid_mIoU=50.79%, time=38sec [i] iteration=2,046, learning_rate=0.0057, loss=0.4106, time=56sec [i] iteration=2,112, learning_rate=0.0056, loss=0.4332, time=17sec [i] iteration=2,178, learning_rate=0.0056, loss=0.4205, time=17sec [i] iteration=2,244, learning_rate=0.0056, loss=0.3834, time=17sec [i] iteration=2,310, learning_rate=0.0055, loss=0.3868, time=17sec [i] iteration=2,376, learning_rate=0.0055, loss=0.4297, time=17sec [i] iteration=2,442, learning_rate=0.0054, loss=0.3851, time=17sec [i] iteration=2,508, learning_rate=0.0054, loss=0.4366, time=17sec [i] iteration=2,574, learning_rate=0.0053, loss=0.4140, time=17sec [i] iteration=2,640, learning_rate=0.0053, loss=0.3849, time=17sec [i] save model [i] iteration=2,644, mIoU=51.25%, best_valid_mIoU=51.25%, time=38sec [i] iteration=2,706, learning_rate=0.0053, loss=0.3532, time=56sec [i] iteration=2,772, learning_rate=0.0052, loss=0.3969, time=17sec [i] iteration=2,838, learning_rate=0.0052, loss=0.3573, time=17sec [i] iteration=2,904, learning_rate=0.0051, loss=0.3661, time=17sec [i] iteration=2,970, learning_rate=0.0051, loss=0.3844, time=17sec [i] iteration=3,036, learning_rate=0.0050, loss=0.3913, time=17sec [i] iteration=3,102, learning_rate=0.0050, loss=0.3605, time=17sec [i] iteration=3,168, learning_rate=0.0050, loss=0.4062, time=17sec [i] iteration=3,234, learning_rate=0.0049, loss=0.3763, time=17sec [i] iteration=3,300, learning_rate=0.0049, loss=0.3885, time=17sec [i] iteration=3,305, mIoU=49.77%, best_valid_mIoU=51.25%, time=38sec [i] iteration=3,366, learning_rate=0.0048, loss=0.3577, time=56sec [i] iteration=3,432, learning_rate=0.0048, loss=0.3556, time=17sec [i] iteration=3,498, learning_rate=0.0047, loss=0.3837, time=17sec [i] iteration=3,564, learning_rate=0.0047, loss=0.3703, time=17sec [i] iteration=3,630, learning_rate=0.0046, loss=0.3720, time=17sec [i] iteration=3,696, learning_rate=0.0046, loss=0.3600, time=17sec [i] iteration=3,762, learning_rate=0.0046, loss=0.3618, time=17sec [i] iteration=3,828, learning_rate=0.0045, loss=0.3650, time=17sec [i] iteration=3,894, learning_rate=0.0045, loss=0.4094, time=17sec [i] iteration=3,960, learning_rate=0.0044, loss=0.3648, time=17sec [i] save model [i] iteration=3,966, mIoU=53.03%, best_valid_mIoU=53.03%, time=38sec [i] iteration=4,026, learning_rate=0.0044, loss=0.3729, time=56sec [i] iteration=4,092, learning_rate=0.0043, loss=0.3564, time=17sec [i] iteration=4,158, learning_rate=0.0043, loss=0.3481, time=17sec [i] iteration=4,224, learning_rate=0.0042, loss=0.3464, time=17sec [i] iteration=4,290, learning_rate=0.0042, loss=0.3544, time=17sec [i] iteration=4,356, learning_rate=0.0042, loss=0.3619, time=17sec [i] iteration=4,422, learning_rate=0.0041, loss=0.3461, time=17sec [i] iteration=4,488, learning_rate=0.0041, loss=0.3715, time=17sec [i] iteration=4,554, learning_rate=0.0040, loss=0.3182, time=17sec [i] iteration=4,620, learning_rate=0.0040, loss=0.3448, time=17sec [i] save model [i] iteration=4,627, mIoU=53.53%, best_valid_mIoU=53.53%, time=38sec [i] iteration=4,686, learning_rate=0.0039, loss=0.3394, time=56sec [i] iteration=4,752, learning_rate=0.0039, loss=0.3264, time=17sec [i] iteration=4,818, learning_rate=0.0038, loss=0.3340, time=17sec [i] iteration=4,884, learning_rate=0.0038, loss=0.3304, time=17sec [i] iteration=4,950, learning_rate=0.0038, loss=0.3350, time=17sec [i] iteration=5,016, learning_rate=0.0037, loss=0.3412, time=17sec [i] iteration=5,082, learning_rate=0.0037, loss=0.3317, time=17sec [i] iteration=5,148, learning_rate=0.0036, loss=0.3452, time=17sec [i] iteration=5,214, learning_rate=0.0036, loss=0.3681, time=17sec [i] iteration=5,280, learning_rate=0.0035, loss=0.3098, time=17sec [i] save model [i] iteration=5,288, mIoU=53.69%, best_valid_mIoU=53.69%, time=38sec [i] iteration=5,346, learning_rate=0.0035, loss=0.2972, time=56sec [i] iteration=5,412, learning_rate=0.0034, loss=0.3036, time=17sec [i] iteration=5,478, learning_rate=0.0034, loss=0.3157, time=17sec [i] iteration=5,544, learning_rate=0.0034, loss=0.3159, time=17sec [i] iteration=5,610, learning_rate=0.0033, loss=0.3297, time=17sec [i] iteration=5,676, learning_rate=0.0033, loss=0.3275, time=17sec [i] iteration=5,742, learning_rate=0.0032, loss=0.3331, time=17sec [i] iteration=5,808, learning_rate=0.0032, loss=0.3217, time=17sec [i] iteration=5,874, learning_rate=0.0031, loss=0.3111, time=17sec [i] iteration=5,940, learning_rate=0.0031, loss=0.3477, time=17sec [i] save model [i] iteration=5,949, mIoU=53.96%, best_valid_mIoU=53.96%, time=38sec [i] iteration=6,006, learning_rate=0.0030, loss=0.3148, time=56sec [i] iteration=6,072, learning_rate=0.0030, loss=0.2941, time=17sec [i] iteration=6,138, learning_rate=0.0029, loss=0.3113, time=17sec [i] iteration=6,204, learning_rate=0.0029, loss=0.3195, time=17sec [i] iteration=6,270, learning_rate=0.0028, loss=0.3025, time=17sec [i] iteration=6,336, learning_rate=0.0028, loss=0.3077, time=17sec [i] iteration=6,402, learning_rate=0.0028, loss=0.3175, time=17sec [i] iteration=6,468, learning_rate=0.0027, loss=0.3168, time=17sec [i] iteration=6,534, learning_rate=0.0027, loss=0.3162, time=17sec [i] iteration=6,600, learning_rate=0.0026, loss=0.3190, time=17sec [i] iteration=6,610, mIoU=53.62%, best_valid_mIoU=53.96%, time=37sec [i] iteration=6,666, learning_rate=0.0026, loss=0.3074, time=55sec [i] iteration=6,732, learning_rate=0.0025, loss=0.3036, time=17sec [i] iteration=6,798, learning_rate=0.0025, loss=0.3042, time=17sec [i] iteration=6,864, learning_rate=0.0024, loss=0.3041, time=17sec [i] iteration=6,930, learning_rate=0.0024, loss=0.3093, time=17sec [i] iteration=6,996, learning_rate=0.0023, loss=0.3124, time=17sec [i] iteration=7,062, learning_rate=0.0023, loss=0.3095, time=17sec [i] iteration=7,128, learning_rate=0.0022, loss=0.2930, time=17sec [i] iteration=7,194, learning_rate=0.0022, loss=0.2987, time=17sec [i] iteration=7,260, learning_rate=0.0021, loss=0.2987, time=17sec [i] iteration=7,271, mIoU=53.70%, best_valid_mIoU=53.96%, time=37sec [i] iteration=7,326, learning_rate=0.0021, loss=0.2850, time=55sec [i] iteration=7,392, learning_rate=0.0020, loss=0.2973, time=17sec [i] iteration=7,458, learning_rate=0.0020, loss=0.2897, time=17sec [i] iteration=7,524, learning_rate=0.0019, loss=0.2875, time=17sec [i] iteration=7,590, learning_rate=0.0019, loss=0.2958, time=17sec [i] iteration=7,656, learning_rate=0.0018, loss=0.2981, time=17sec [i] iteration=7,722, learning_rate=0.0018, loss=0.3028, time=17sec [i] iteration=7,788, learning_rate=0.0018, loss=0.2850, time=17sec [i] iteration=7,854, learning_rate=0.0017, loss=0.2987, time=17sec [i] iteration=7,920, learning_rate=0.0017, loss=0.2677, time=17sec [i] save model [i] iteration=7,932, mIoU=54.37%, best_valid_mIoU=54.37%, time=38sec [i] iteration=7,986, learning_rate=0.0016, loss=0.2964, time=56sec [i] iteration=8,052, learning_rate=0.0016, loss=0.2886, time=17sec [i] iteration=8,118, learning_rate=0.0015, loss=0.2892, time=17sec [i] iteration=8,184, learning_rate=0.0015, loss=0.2826, time=17sec [i] iteration=8,250, learning_rate=0.0014, loss=0.2820, time=17sec [i] iteration=8,316, learning_rate=0.0014, loss=0.2768, time=17sec [i] iteration=8,382, learning_rate=0.0013, loss=0.2835, time=17sec [i] iteration=8,448, learning_rate=0.0013, loss=0.2853, time=17sec [i] iteration=8,514, learning_rate=0.0012, loss=0.2774, time=17sec [i] iteration=8,580, learning_rate=0.0012, loss=0.2760, time=17sec [i] iteration=8,593, mIoU=54.07%, best_valid_mIoU=54.37%, time=37sec [i] iteration=8,646, learning_rate=0.0011, loss=0.2826, time=55sec [i] iteration=8,712, learning_rate=0.0010, loss=0.2559, time=17sec [i] iteration=8,778, learning_rate=0.0010, loss=0.2634, time=17sec [i] iteration=8,844, learning_rate=0.0009, loss=0.2811, time=17sec [i] iteration=8,910, learning_rate=0.0009, loss=0.2935, time=17sec [i] iteration=8,976, learning_rate=0.0008, loss=0.2786, time=17sec [i] iteration=9,042, learning_rate=0.0008, loss=0.2715, time=17sec [i] iteration=9,108, learning_rate=0.0007, loss=0.2898, time=17sec [i] iteration=9,174, learning_rate=0.0007, loss=0.2847, time=17sec [i] iteration=9,240, learning_rate=0.0006, loss=0.2928, time=17sec [i] save model [i] iteration=9,254, mIoU=55.12%, best_valid_mIoU=55.12%, time=38sec [i] iteration=9,306, learning_rate=0.0006, loss=0.2850, time=56sec [i] iteration=9,372, learning_rate=0.0005, loss=0.2861, time=17sec [i] iteration=9,438, learning_rate=0.0005, loss=0.2701, time=17sec [i] iteration=9,504, learning_rate=0.0004, loss=0.2785, time=17sec [i] iteration=9,570, learning_rate=0.0003, loss=0.2818, time=17sec [i] iteration=9,636, learning_rate=0.0003, loss=0.2744, time=17sec [i] iteration=9,702, learning_rate=0.0002, loss=0.2816, time=17sec [i] iteration=9,768, learning_rate=0.0002, loss=0.2616, time=17sec [i] iteration=9,834, learning_rate=0.0001, loss=0.2540, time=17sec [i] iteration=9,900, learning_rate=0.0000, loss=0.2749, time=17sec [i] iteration=9,915, mIoU=55.09%, best_valid_mIoU=55.12%, time=38sec |