Files
MASForensic/agents/media.py
BattleTag 81ade8f7ac feat(refit): complete S1-S6 — case abstraction, grounding, log-odds, plugins, coref, multi-source
Consolidates the long-running refit work (DESIGN.md as authoritative spec)
into a single baseline commit. Six stages landed together:

  S1  Case + EvidenceSource abstraction; tools parameterised by source_id
      (case.py, main.py multi-source bootstrap, .bin extension support)
  S2  Grounding gateway in add_phenomenon: verified_facts cite real
      ToolInvocation ids; substring / normalised match enforced; agent +
      task scope checked. Phenomenon.description split into verified_facts
      (grounded) + interpretation (free text). [invocation: inv-xxx]
      prefix on every wrapped tool result so the LLM can cite.
  S3  Confidence as additive log-odds: edge_type → log10(LR) calibration
      table; commutative updates; supported / refuted thresholds derived
      from log_odds; hypothesis × evidence matrix view.
  S4  iOS plugin: unzip_archive + parse_plist / sqlite_tables /
      sqlite_query / parse_ios_keychain / read_idevice_info;
      IOSArtifactAgent; SOURCE_TYPE_AGENTS routing.
  S5  Cross-source entity resolution: typed identifiers on Entity,
      observe_identity gateway, auto coref hypothesis with shared /
      conflicting strong/weak LR edges, reversible same_as edges,
      actor_clusters() view.
  S6  Android partition probe + AndroidArtifactAgent; MediaAgent with
      OCR fallback; orchestrator Phase 1 iterates every analysable
      source; platform-aware get_triage_agent_type; ReportAgent renders
      actor clusters + per-source breakdown.

142 unit tests / 1 skipped — full coverage of the new gateway, log-odds
math, coref hypothesis fall-out, and orchestrator multi-source dispatch.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-21 02:12:10 -10:00

53 lines
2.1 KiB
Python

"""Media Agent — OCR-based analysis of screenshot/photo evidence.
DESIGN.md §4.7: the LLM backend has no vision capability, so JPEG/PNG
evidence must go through tesseract first. The agent runs OCR, then
records extracted strings — especially identifiers (wallet addresses,
phone numbers, usernames) — via the grounded observe_identity gateway so
they participate in cross-source coref the same way iOS keychain entries
or Windows account names do.
If the OCR runtime is missing on the host, ocr_image returns an explicit
install hint; the agent should record that as a negative finding ("no
text extracted — tesseract not installed") rather than guessing.
"""
from __future__ import annotations
from base_agent import BaseAgent
from evidence_graph import EvidenceGraph
from llm_client import LLMClient
from tool_registry import TOOL_CATALOG
class MediaAgent(BaseAgent):
name = "media"
role = (
"Media / OCR forensic analyst. You analyse screenshots, photos, and "
"scanned documents — any pixel-based evidence the LLM cannot read "
"directly. Workflow: list_extracted_dir to enumerate images, "
"ocr_image on each promising one, then add_phenomenon (with the "
"OCR'd text as the verified_fact value) and observe_identity for "
"any wallet addresses, phone numbers, email addresses, or "
"usernames the text contains. If OCR fails because tesseract is "
"missing, RECORD that as a negative finding instead of fabricating "
"image content — the absence is a real fact about this run."
)
def __init__(self, llm: LLMClient, graph: EvidenceGraph) -> None:
super().__init__(llm, graph)
self._register_tools()
def _register_tools(self) -> None:
tool_names = [
"ocr_image",
"list_extracted_dir", "find_files",
"read_binary_preview",
"read_text_file",
"search_text_file",
]
for name in tool_names:
td = TOOL_CATALOG.get(name)
if td:
self.register_tool(td.name, td.description, td.input_schema, td.executor)