ID_audio,label,score_spoof,score_bonafide string |
|---|
E_0009538969,0,1.87587643,-0.87587649 |
E_0009249178,0,1.62173748,-0.62173742 |
E_0004993854,1,-1.85468221,2.85468221 |
E_0006624752,0,2.42233968,-1.42233968 |
E_0007708293,0,0.14464080,0.85535920 |
E_0006397484,0,1.03417051,-0.03417049 |
E_0006028981,1,-1.63157511,2.63157511 |
E_0007218111,0,2.31170654,-1.31170642 |
E_0004684376,0,1.92108297,-0.92108291 |
E_0009977947,1,-1.97799802,2.97799802 |
E_0003758851,0,3.82500291,-2.82500291 |
E_0000018288,0,-0.54815018,1.54815018 |
E_0008001205,0,0.99812907,0.00187093 |
E_0004513239,0,0.83063054,0.16936949 |
E_0003351162,1,1.26202393,-0.26202393 |
E_0000778532,0,-0.14298952,1.14298952 |
E_0002864934,0,0.46771014,0.53228986 |
E_0008174851,0,1.92191231,-0.92191231 |
E_0001635161,0,-0.01494598,1.01494598 |
E_0000040212,0,-0.25132179,1.25132179 |
E_0004572489,0,-0.85065544,1.85065544 |
E_0008665728,0,0.05913085,0.94086915 |
E_0006427894,0,-0.78579354,1.78579354 |
E_0003098390,0,0.58959979,0.41040021 |
E_0005536658,0,0.92878044,0.07121955 |
E_0003755167,0,0.62151396,0.37848604 |
E_0007105493,0,-0.79657316,1.79657316 |
E_0000540119,0,0.27037174,0.72962826 |
E_0005789289,1,0.85351551,0.14648451 |
E_0006731508,0,4.48282766,-3.48282766 |
E_0006690576,0,2.79862833,-1.79862821 |
E_0000876598,0,1.86649418,-0.86649424 |
E_0001758424,0,1.45800853,-0.45800853 |
E_0001821514,0,3.83782887,-2.83782887 |
E_0000502309,1,-2.52776766,3.52776766 |
E_0006297507,0,3.19098115,-2.19098115 |
E_0005894640,0,0.72819167,0.27180833 |
E_0005755392,0,-0.15131569,1.15131569 |
E_0005909570,0,0.56752020,0.43247980 |
E_0003091539,0,1.98294020,-0.98294026 |
E_0005124619,1,2.23582792,-1.23582780 |
E_0007076178,0,0.54857206,0.45142794 |
E_0004998193,0,-1.36782217,2.36782217 |
E_0000910678,0,1.06086469,-0.06086464 |
E_0005242022,0,0.41146559,0.58853441 |
E_0009729190,0,1.93919873,-0.93919867 |
E_0002286370,0,0.54895353,0.45104647 |
E_0007776358,1,-0.13395178,1.13395178 |
E_0007552110,0,-0.88620090,1.88620090 |
E_0007275327,0,2.37438869,-1.37438858 |
E_0002625235,0,2.19189239,-1.19189239 |
E_0002244098,0,1.38749194,-0.38749188 |
E_0008817674,0,3.64162850,-2.64162850 |
E_0002566328,1,-0.35284841,1.35284841 |
E_0004100942,0,2.75637817,-1.75637829 |
E_0006544205,0,0.59702480,0.40297520 |
E_0007224301,0,2.18295240,-1.18295228 |
E_0001491973,0,4.13306475,-3.13306475 |
E_0001019563,1,-0.18693638,1.18693638 |
E_0001250670,0,0.99454606,0.00545394 |
E_0006197024,0,0.60780674,0.39219326 |
E_0003349875,0,-0.22859991,1.22859991 |
E_0002058189,0,-0.47412896,1.47412896 |
E_0007005615,1,2.00914955,-1.00914943 |
E_0004434170,0,0.12228161,0.87771839 |
E_0003039320,0,3.17996454,-2.17996454 |
E_0008884579,0,0.77529830,0.22470172 |
E_0003476027,0,4.18502617,-3.18502617 |
E_0000605770,0,3.43169141,-2.43169141 |
E_0002031519,1,-1.25007844,2.25007844 |
E_0006707939,0,-0.13594437,1.13594437 |
E_0006534363,0,0.52381176,0.47618824 |
E_0009917704,1,-0.08310485,1.08310485 |
E_0002789871,0,0.19676489,0.80323511 |
E_0003685394,0,3.22215939,-2.22215939 |
E_0004672768,0,-0.37869728,1.37869728 |
E_0005643448,0,0.15466177,0.84533823 |
E_0005745281,0,1.41270661,-0.41270655 |
E_0000253913,0,0.57007194,0.42992806 |
E_0005235902,1,0.88731098,0.11268902 |
E_0005817104,1,-0.11409926,1.11409926 |
E_0008573051,0,2.85961509,-1.85961509 |
E_0000524087,0,2.64409304,-1.64409316 |
E_0008465820,0,3.85127163,-2.85127163 |
E_0008545057,0,1.79025102,-0.79025108 |
E_0004735077,0,3.96643567,-2.96643567 |
E_0004677535,0,0.79186785,0.20813215 |
E_0006571829,1,-0.49203455,1.49203455 |
E_0007156249,0,3.53212237,-2.53212237 |
E_0008175315,0,2.66795158,-1.66795170 |
E_0008539495,0,-0.45585084,1.45585084 |
E_0006001248,0,1.78940105,-0.78940105 |
E_0001822333,0,0.51101816,0.48898184 |
E_0002052791,0,1.41393924,-0.41393930 |
E_0004759784,0,-0.94221258,1.94221258 |
E_0006624276,1,0.01834989,0.98165011 |
E_0001726079,1,0.07253551,0.92746449 |
E_0004871403,0,-0.22431052,1.22431052 |
E_0009023364,0,0.01945490,0.98054510 |
E_0003020609,0,3.46008587,-2.46008587 |
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Check out the documentation for more information.
DeepFense Paper Scores
Canonical, reproducible score bundle for the DeepFense camera-ready paper.
Hugging Face: DeepFense/prediction_scores
Directory layout
scores/
├── README.md
├── {train_recipe}/ # dataset the model was TRAINED on
│ ├── {backend}/ # AASIST | MLP | Nes2Net | TCM
│ │ └── {frontend}/ # Wav2Vec2 | HuBERT | WavLM | EAT
│ │ └── seed{2|42|240}/
│ │ └── {eval_benchmark}/ # held-out TEST set
│ │ ├── predictions.txt # per-utterance scores (TSV)
│ │ └── metrics.json # EER, ACC, F1, …
│ └── _summaries/{eval_benchmark}.json # optional cross-architecture tables
└── bias_fairness/
└── {accent|emotions|gender|language|quality}/
└── {eval_benchmark}/
└── {train_recipe}/{backend}/{frontend}/seed{N}/
└── utterances.txt # scores + subgroup metadata (TSV)
Example
From checkpoint DeepFense_ADD23_Wav2Vec2_TCM_NoAug_Seed240 evaluated on add22_test_track1:
ADD23/TCM/Wav2Vec2/seed240/add22_test_track1/predictions.txt
ADD23/TCM/Wav2Vec2/seed240/add22_test_track1/metrics.json
Naming conventions
| Token | Canonical form | Notes |
|---|---|---|
| Train recipe | ASV5, ASV19, ADD23, CodecFake, HABLA, PartialSpoof |
Training dataset (not the eval set). ASV5 = trained on ASVspoof 5; do not confuse with eval asvspoof5_test. |
| Frontend | Wav2Vec2, HuBERT, WavLM, EAT |
Always PascalCase; Hubert → HuBERT. |
| Backend | AASIST, MLP, Nes2Net, TCM |
Uppercase acronym. |
| Seed | seed2, seed42, seed240 |
Three seeds per recipe. |
| Eval benchmark | lowercase snake_case | e.g. asvspoof5_test, asvspoof2019_la_eval, mlaad_final, add22_test_track1. |
Eval benchmarks (20)
add22_test_track1, add22_test_track3, add23_test_R1, add23_test_R2, asvspoof2019_la_eval, asvspoof21_df_eval, asvspoof21_la_eval, asvspoof5_test, codecfake_eval, ctrsvdd_eval, fakemusiccaps_eval, habla_test, itw_eval, mlaad_final, odss_test, partialedit_eval, partialspoof_eval, replaydf_all_eval, spoofceleb_eval
File formats (.txt / .json only)
predictions.txt — clip-level (TSV)
utterance_id label score_spoof score_bonafide
LA_E_12345 0 -2.14895 3.14895
LA_T_67890 1 4.37140 -3.37140
label:0= spoof,1= bonafide- LLR =
score_bonafide − score_spoof
metrics.json
Per-run aggregated metrics (EER, ACC, F1, confidence intervals).
bias_fairness/.../utterances.txt
Per-utterance scores with subgroup columns (gender, accent, NISQA quality, etc.).
Score columns: score_spoof, score_bonafide (renamed from legacy class0/class1).
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